import matplotlib matplotlib.use('Agg') import matplotlib.pyplot as plt import numpy as np import torch LINE_COLORS = ['w', 'r', 'orange', 'k', 'cyan', 'm', 'b', 'lime', 'g', 'brown', 'navy'] def spec_to_figure(spec, vmin=None, vmax=None, title='', f0s=None, dur_info=None): if isinstance(spec, torch.Tensor): spec = spec.cpu().numpy() H = spec.shape[1] // 2 fig = plt.figure(figsize=(12, 6)) plt.title(title) plt.pcolor(spec.T, vmin=vmin, vmax=vmax) if dur_info is not None: assert isinstance(dur_info, dict) txt = dur_info['txt'] dur_gt = dur_info['dur_gt'] if isinstance(dur_gt, torch.Tensor): dur_gt = dur_gt.cpu().numpy() dur_gt = np.cumsum(dur_gt).astype(int) for i in range(len(dur_gt)): shift = (i % 8) + 1 plt.text(dur_gt[i], shift * 4, txt[i]) plt.vlines(dur_gt[i], 0, H // 2, colors='b') # blue is gt plt.xlim(0, dur_gt[-1]) if 'dur_pred' in dur_info: dur_pred = dur_info['dur_pred'] if isinstance(dur_pred, torch.Tensor): dur_pred = dur_pred.cpu().numpy() dur_pred = np.cumsum(dur_pred).astype(int) for i in range(len(dur_pred)): shift = (i % 8) + 1 plt.text(dur_pred[i], H + shift * 4, txt[i]) plt.vlines(dur_pred[i], H, H * 1.5, colors='r') # red is pred plt.xlim(0, max(dur_gt[-1], dur_pred[-1])) if f0s is not None: ax = plt.gca() ax2 = ax.twinx() if not isinstance(f0s, dict): f0s = {'f0': f0s} for i, (k, f0) in enumerate(f0s.items()): if isinstance(f0, torch.Tensor): f0 = f0.cpu().numpy() ax2.plot(f0, label=k, c=LINE_COLORS[i], linewidth=1, alpha=0.5) ax2.set_ylim(0, 1000) ax2.legend() return fig