396 lines
15 KiB
Python
396 lines
15 KiB
Python
import numpy as np
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from scipy.signal import welch
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from scipy.fft import fft
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from scipy import signal
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from collections import deque
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import time
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import os
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# import logging
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import base64
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import io
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# logger = logging.getLogger(__name__)
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#
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# try:
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# import matplotlib
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# matplotlib.use('Agg')
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# import matplotlib.pyplot as plt
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# MATPLOTLIB_AVAILABLE = True
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# except ImportError:
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# MATPLOTLIB_AVAILABLE = False
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# logger.warning("matplotlib未安装,报告图表功能不可用")
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class Calculate():
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def __init__(self, Threshold_value_low, Threshold_value_high, fs=250, win_len=10):
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self.Threshold_value_low = Threshold_value_low
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self.Threshold_value_high = Threshold_value_high
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self.fs = fs
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self.focus_result = []
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self.CLI_result = []
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self.EVI_result = []
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self.eegQueue = deque(maxlen=win_len)
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# # 存储历史数据用于绘图
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# self.beta_history = []
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# self.alpha_history = []
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# self.theta_history = []
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# self.focus_history = []
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# self.timestamp_history = []
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#
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# # 记录开始时间
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# self.start_time = None
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# self.recording = False
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#
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# # 图表保存路径
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# self.chart_dir = "reports"
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# if not os.path.exists(self.chart_dir):
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# os.makedirs(self.chart_dir)
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# print(f"[调试] 创建目录: {self.chart_dir}")
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# 初始化滤波器
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self.b_notch, self.a_notch = signal.iirnotch(50 / (self.fs/2), 30)
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self.b_design = signal.firwin(65, [2 / (self.fs/2), 40 / (self.fs/2)], pass_zero=False)
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print("[调试] Calculate 类初始化完成")
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def calculate_focus(self, beta, alpha, theta):
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"""
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专注度计算 - 固定映射版本
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"""
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# 原始比值
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raw = beta / (alpha + theta + 1e-10)
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# Sigmoid 映射:让 raw 在 0.3-1.5 区间敏感
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# 参数可调:
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# k = 12 (斜率,越大越陡)
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# x0 = 0.6 (中心点,raw=0.6时focus≈50)
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k = 12.0
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x0 = 0.6
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focus = 100.0 / (1.0 + np.exp(-k * (raw - x0)))
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# 可选:添加滑动平均平滑
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return int(focus)
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def calculate_all(self, data, fs, nperseg=1000):
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mean_x = np.mean(data, axis=-1, keepdims=True)
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data = data - mean_x
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freqs, psd = self.compute_psd_multichannel(data, fs, nperseg)
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beta_psd = np.sum(self.band_psd(freqs, psd, (13, 30)))
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alpha_psd = np.sum(self.band_psd(freqs, psd, (8, 13)))
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theta_psd = np.sum(self.band_psd(freqs, psd, (4, 8)))
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print(f"[功率] β={beta_psd:.2f} | α={alpha_psd:.2f} | θ={theta_psd:.2f}")
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focus_score = self.calculate_focus(beta_psd, alpha_psd, theta_psd)
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focus_score = max(0, min(100, focus_score))
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self.focus_result.append(focus_score)
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if len(self.focus_result) > 3:
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self.focus_result.pop(0)
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final_focus = int(self.simple_moving_average(self.focus_result, window_size=5))
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cli_denom = alpha_psd + beta_psd
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CLI_score = np.log(theta_psd / (cli_denom + 1e-10)) if cli_denom > 0 else 0
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self.CLI_result.append(CLI_score)
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if len(self.CLI_result) > 5:
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self.CLI_result.pop(0)
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final_CLI = round(self.simple_moving_average(self.CLI_result, window_size=5), 2)
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return final_focus, final_CLI, beta_psd, alpha_psd, theta_psd
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def compute_psd_multichannel(self, data, fs=250, nperseg=1000):
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n_samples = data.shape[-1]
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if n_samples < nperseg:
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nperseg = n_samples
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noverlap = 500
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if noverlap >= nperseg:
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noverlap = int(nperseg / 2)
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if nperseg == 0:
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return np.array([]), np.zeros((data.shape[0], 0))
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freqs, psd = welch(data, fs=fs, nperseg=nperseg, noverlap=noverlap, axis=-1)
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return freqs, psd
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def band_psd(self, freqs, psd, band):
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idx = np.logical_and(freqs >= band[0], freqs <= band[1])
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return np.sum(psd[:, idx], axis=-1)
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def simple_moving_average(self, data, window_size=5):
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if len(data) == 0:
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return 30
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window = data[-window_size:]
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return sum(window) / len(window)
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def reset_queue(self):
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self.eegQueue.clear()
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# def start_recording(self):
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# """开始记录数据"""
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# self.recording = True
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# self.start_time = time.time()
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# self.beta_history = []
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# self.alpha_history = []
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# self.theta_history = []
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# self.focus_history = []
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# self.timestamp_history = []
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# print("[调试] ========== 开始记录专注度数据 ==========")
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# def stop_recording(self):
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# """停止记录并生成图表"""
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# print(f"[调试] stop_recording被调用, recording={self.recording}, focus_history长度={len(self.focus_history)}")
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# self.recording = False
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# if len(self.focus_history) > 0:
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# print("[调试] 数据非空,开始生成图表...")
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# # 保存到本地文件
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# chart_path = self.save_chart_to_file()
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# if chart_path:
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# print(f"[调试] 本地文件保存成功: {chart_path}")
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# else:
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# print("[调试] 本地文件保存失败")
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# # 生成base64编码
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# base64_data = self.generate_chart_base64()
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# return base64_data
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# else:
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# print("[调试] 没有数据可保存,focus_history为空")
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# return None
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# def add_data_point(self, focus, beta, alpha, theta):
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# if not self.recording:
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# return
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# current_time = time.time()
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# elapsed = current_time - self.start_time
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#
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# self.beta_history.append(beta)
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# self.alpha_history.append(alpha)
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# self.theta_history.append(theta)
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# self.focus_history.append(focus)
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# self.timestamp_history.append(elapsed)
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# print(f"[调试] 记录数据点: time={elapsed:.1f}s, focus={focus}, beta={beta:.2f}")
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# def save_chart_to_file(self):
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# """
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# 保存图表到本地文件(唯一实现)
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# """
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# print(f"[调试] save_chart_to_file被调用, MATPLOTLIB_AVAILABLE={MATPLOTLIB_AVAILABLE}")
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#
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# if not MATPLOTLIB_AVAILABLE:
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# print("[调试] matplotlib不可用,无法保存")
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# return None
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#
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# if len(self.focus_history) < 2:
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# print(f"[调试] 数据点不足,需要至少2个点,当前{len(self.focus_history)}个点")
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# return None
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#
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# print(f"[调试] 开始保存图表到本地文件...")
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#
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# # 确保所有列表长度一致
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# min_len = min(len(self.beta_history), len(self.alpha_history),
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# len(self.theta_history), len(self.focus_history),
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# len(self.timestamp_history))
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#
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# print(f"[调试] 数据长度: min_len={min_len}")
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#
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# beta_list = self.beta_history[:min_len]
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# alpha_list = self.alpha_history[:min_len]
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# theta_list = self.theta_history[:min_len]
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# focus_list = self.focus_history[:min_len]
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# times = self.timestamp_history[:min_len]
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#
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# # 生成文件名
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# timestamp = time.strftime("%Y%m%d_%H%M%S")
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# chart_path = os.path.join(self.chart_dir, f"concentration_report_{timestamp}.png")
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# print(f"[调试] 保存路径: {chart_path}")
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#
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# try:
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# # 创建图表
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# fig, ax1 = plt.subplots(figsize=(14, 8))
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#
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# # 左Y轴:功率数据
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# ax1.plot(times, beta_list, 'b-', linewidth=1.5, alpha=0.8, label='Beta Power')
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# ax1.plot(times, alpha_list, 'g-', linewidth=1.5, alpha=0.8, label='Alpha Power')
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# ax1.plot(times, theta_list, 'orange', linewidth=1.5, alpha=0.8, label='Theta Power')
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# ax1.set_xlabel('Time (s)', fontsize=12)
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# ax1.set_ylabel('Band Power', fontsize=12, color='black')
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# ax1.tick_params(axis='y', labelcolor='black')
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# ax1.legend(loc='upper left')
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# ax1.grid(True, alpha=0.3)
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#
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# # 右Y轴:专注度
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# ax2 = ax1.twinx()
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# ax2.plot(times, focus_list, 'r-', linewidth=2, alpha=0.9, label='Focus (%)')
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# ax2.set_ylabel('Focus (%)', fontsize=12, color='red')
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# ax2.tick_params(axis='y', labelcolor='red')
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# ax2.set_ylim(0, 105)
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# ax2.legend(loc='upper right')
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#
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# # 标题
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# duration = times[-1] if times else 0
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# avg_focus = np.mean(focus_list) if focus_list else 0
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# plt.title(f'Concentration and EEG Band Power Trend\nDuration: {duration:.1f}s, Avg Focus: {avg_focus:.1f}%',
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# fontsize=14)
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#
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# plt.tight_layout()
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# plt.savefig(chart_path, dpi=150, bbox_inches='tight')
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# plt.close()
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#
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# print(f"\n{'='*60}")
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# print(f"专注度报告图片已保存到本地:")
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# print(f" 文件路径: {chart_path}")
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# print(f" 数据点数: {min_len}")
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# print(f" 时长: {duration:.1f}秒")
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# print(f" 平均专注度: {avg_focus:.1f}%")
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# print(f"{'='*60}\n")
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#
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# return chart_path
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#
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# except Exception as e:
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# print(f"[调试] 保存文件时出错: {e}")
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# import traceback
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# traceback.print_exc()
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# return None
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#
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# def generate_chart_base64(self):
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# """
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# 生成图表的base64编码(用于网络传输)
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# """
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# if not MATPLOTLIB_AVAILABLE:
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# return None
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#
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# if len(self.focus_history) < 2:
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# return None
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#
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# min_len = min(len(self.beta_history), len(self.alpha_history),
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# len(self.theta_history), len(self.focus_history),
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# len(self.timestamp_history))
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#
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# beta_list = self.beta_history[:min_len]
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# alpha_list = self.alpha_history[:min_len]
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# theta_list = self.theta_history[:min_len]
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# focus_list = self.focus_history[:min_len]
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# times = self.timestamp_history[:min_len]
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#
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# fig, ax1 = plt.subplots(figsize=(14, 8))
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#
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# ax1.plot(times, beta_list, 'b-', linewidth=1.5, alpha=0.8, label='Beta Power')
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# ax1.plot(times, alpha_list, 'g-', linewidth=1.5, alpha=0.8, label='Alpha Power')
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# ax1.plot(times, theta_list, 'orange', linewidth=1.5, alpha=0.8, label='Theta Power')
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# ax1.set_xlabel('Time (s)', fontsize=12)
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# ax1.set_ylabel('Band Power', fontsize=12, color='black')
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# ax1.tick_params(axis='y', labelcolor='black')
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# ax1.legend(loc='upper left')
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# ax1.grid(True, alpha=0.3)
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#
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# ax2 = ax1.twinx()
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# ax2.plot(times, focus_list, 'r-', linewidth=2, alpha=0.9, label='Focus (%)')
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# ax2.set_ylabel('Focus (%)', fontsize=12, color='red')
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# ax2.tick_params(axis='y', labelcolor='red')
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# ax2.set_ylim(0, 105)
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# ax2.legend(loc='upper right')
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#
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# duration = times[-1] if times else 0
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# avg_focus = np.mean(focus_list) if focus_list else 0
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# plt.title(f'Concentration and EEG Band Power Trend\nDuration: {duration:.1f}s, Avg Focus: {avg_focus:.1f}%',
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# fontsize=14)
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#
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# plt.tight_layout()
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#
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# buffer = io.BytesIO()
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# plt.savefig(buffer, format='png', dpi=150, bbox_inches='tight')
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# buffer.seek(0)
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# image_base64 = base64.b64encode(buffer.read()).decode('utf-8')
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# plt.close()
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#
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# return image_base64
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def queueOpt(self, data):
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if data is None or data.size == 0:
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return None
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if len(self.eegQueue) < self.eegQueue.maxlen:
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self.eegQueue.append(data)
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else:
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self.eegQueue.append(data)
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if len(self.eegQueue) == self.eegQueue.maxlen:
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eegData = np.hstack([self.eegQueue[i] for i in range(len(self.eegQueue))])
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if eegData.size == 0:
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return None
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eegData -= np.mean(eegData, axis=-1, keepdims=True)
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eegData = signal.lfilter(self.b_notch, self.a_notch, eegData)
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eegData = signal.lfilter(self.b_design, 1, eegData)
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focus_score, CLI_score, beta, alpha, theta = self.calculate_all(eegData, fs=self.fs, nperseg=1000)
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# self.add_data_point(focus_score, beta, alpha, theta)
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return focus_score
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return None
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class Calculate2():
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def __init__(self, Threshold_value_low, Threshold_value_high):
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self.Threshold_value_low = Threshold_value_low
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self.Threshold_value_high = Threshold_value_high
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self.focus_result = []
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self.theta_result = []
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self.alpha_result = []
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self.flow_result = []
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def calculate_all(self, data, fs, L=2500):
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mean_x = np.mean(data, axis=-1, keepdims=True)
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data = data - mean_x
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Y = fft(data, axis=-1)
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P2 = np.abs(Y / L)
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P1 = P2[:, :L // 2 + 1]
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P1[:, 1:-1] = 2 * P1[:, 1:-1]
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beta_power = self.PSD(P1, L, fs, 13, 30)
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alpha_power = self.PSD(P1, L, fs, 8, 13)
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theta_power = self.PSD(P1, L, fs, 4, 8)
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gamma_power = self.PSD(P1, L, fs, 30, 100)
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focus_score = beta_power / (alpha_power + theta_power)
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print('focus score:', focus_score)
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focus_score = ((focus_score - self.Threshold_value_low) * 100) / (self.Threshold_value_high - self.Threshold_value_low)
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self.focus_result.append(focus_score)
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if len(self.focus_result) > 3:
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self.focus_result.pop(0)
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final_focus = int(self.simple_moving_average(self.focus_result, window_size=3))
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self.theta_result.append(theta_power)
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if len(self.theta_result) > 30:
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self.theta_result.pop(0)
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self.alpha_result.append(alpha_power)
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if len(self.alpha_result) > 30:
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self.alpha_result.pop(0)
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rest_theta = self.simple_moving_average(self.theta_result, window_size=30)
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rest_alpha = self.simple_moving_average(self.alpha_result, window_size=30)
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distraction_score = (theta_power / rest_theta) * (1 - (alpha_power / rest_alpha))
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flow_score = gamma_power / beta_power
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flow_score = (flow_score / self.Threshold_value_high) * 100
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self.flow_result.append(flow_score)
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if len(self.flow_result) > 3:
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self.flow_result.pop(0)
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final_flow = int(self.simple_moving_average(self.flow_result, window_size=3))
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return final_focus, distraction_score, final_flow
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def PSD(self, P1, L, Fs, s_freq, e_freq):
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s_point = round(s_freq * L / Fs)
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e_point = round(e_freq * L / Fs)
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x, y = P1.shape
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band_PSD = 0
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for i in range(x):
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for j in range(s_point, e_point):
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band_PSD += P1[i, j] ** 2
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return band_PSD
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def simple_moving_average(self, data, window_size=3):
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if len(data) == 0:
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return []
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window = data[-window_size:]
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return sum(window) / len(window) |