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| import numpy as np |
| import torch |
| import matplotlib.pyplot as plt |
| import matplotlib.patches as mpatches |
|
|
| def features_to_RGB(*Fs, masks=None, skip=1): |
| """Project a list of d-dimensional feature maps to RGB colors using PCA.""" |
| from sklearn.decomposition import PCA |
|
|
| def normalize(x): |
| return x / np.linalg.norm(x, axis=-1, keepdims=True) |
|
|
| if masks is not None: |
| assert len(Fs) == len(masks) |
|
|
| flatten = [] |
| for i, F in enumerate(Fs): |
| c, h, w = F.shape |
| F = np.rollaxis(F, 0, 3) |
| F_flat = F.reshape(-1, c) |
| if masks is not None and masks[i] is not None: |
| mask = masks[i] |
| assert mask.shape == F.shape[:2] |
| F_flat = F_flat[mask.reshape(-1)] |
| flatten.append(F_flat) |
| flatten = np.concatenate(flatten, axis=0) |
| flatten = normalize(flatten) |
|
|
| pca = PCA(n_components=3) |
| if skip > 1: |
| pca.fit(flatten[::skip]) |
| flatten = pca.transform(flatten) |
| else: |
| flatten = pca.fit_transform(flatten) |
| flatten = (normalize(flatten) + 1) / 2 |
|
|
| Fs_rgb = [] |
| for i, F in enumerate(Fs): |
| h, w = F.shape[-2:] |
| if masks is None or masks[i] is None: |
| F_rgb, flatten = np.split(flatten, [h * w], axis=0) |
| F_rgb = F_rgb.reshape((h, w, 3)) |
| else: |
| F_rgb = np.zeros((h, w, 3)) |
| indices = np.where(masks[i]) |
| F_rgb[indices], flatten = np.split(flatten, [len(indices[0])], axis=0) |
| F_rgb = np.concatenate([F_rgb, masks[i][..., None]], axis=-1) |
| Fs_rgb.append(F_rgb) |
| assert flatten.shape[0] == 0, flatten.shape |
| return Fs_rgb |
|
|
|
|
| def one_hot_argmax_to_rgb(y, num_class): |
| ''' |
| Args: |
| probs: (B, C, H, W) |
| num_class: int |
| 0: road 0 |
| 1: crossing 1 |
| 2: explicit_pedestrian 2 |
| 4: building |
| 6: terrain |
| 7: parking ` |
| |
| ''' |
|
|
| class_colors = { |
| 'road': (68, 68, 68), |
| 'crossing': (244, 162, 97), |
| 'explicit_pedestrian': (233, 196, 106), |
| |
| 'building': (231, 111, 81), |
| 'terrain': (42, 157, 143), |
| 'parking': (204, 204, 204), |
| 'predicted_void': (255, 255, 255) |
| } |
| class_colors = class_colors.values() |
| class_colors = [torch.tensor(x).float() for x in class_colors] |
|
|
| threshold = 0.25 |
| argmaxed = torch.argmax((y > threshold).float(), dim=1) |
| argmaxed[torch.all(y <= threshold, dim=1)] = num_class |
| |
|
|
| seg_rgb = torch.ones( |
| ( |
| argmaxed.shape[0], |
| 3, |
| argmaxed.shape[1], |
| argmaxed.shape[2], |
| ) |
| ) * 255 |
| for i in range(num_class + 1): |
| seg_rgb[:, 0, :, :][argmaxed == i] = class_colors[i][0] |
| seg_rgb[:, 1, :, :][argmaxed == i] = class_colors[i][1] |
| seg_rgb[:, 2, :, :][argmaxed == i] = class_colors[i][2] |
|
|
| return seg_rgb |
|
|
| def plot_images(imgs, titles=None, cmaps="gray", dpi=100, pad=0.5, adaptive=True): |
| """Plot a set of images horizontally. |
| Args: |
| imgs: a list of NumPy or PyTorch images, RGB (H, W, 3) or mono (H, W). |
| titles: a list of strings, as titles for each image. |
| cmaps: colormaps for monochrome images. |
| adaptive: whether the figure size should fit the image aspect ratios. |
| """ |
| n = len(imgs) |
| if not isinstance(cmaps, (list, tuple)): |
| cmaps = [cmaps] * n |
|
|
| if adaptive: |
| ratios = [i.shape[1] / i.shape[0] for i in imgs] |
| else: |
| ratios = [4 / 3] * n |
| figsize = [sum(ratios) * 4.5, 4.5] |
| fig, ax = plt.subplots( |
| 1, n, figsize=figsize, dpi=dpi, gridspec_kw={"width_ratios": ratios} |
| ) |
| if n == 1: |
| ax = [ax] |
| for i in range(n): |
| ax[i].imshow(imgs[i], cmap=plt.get_cmap(cmaps[i])) |
| ax[i].get_yaxis().set_ticks([]) |
| ax[i].get_xaxis().set_ticks([]) |
| ax[i].set_axis_off() |
| for spine in ax[i].spines.values(): |
| spine.set_visible(False) |
| if titles: |
| ax[i].set_title(titles[i]) |
| |
| |
| class_colors = { |
| 'Road': (68, 68, 68), |
| 'Crossing': (244, 162, 97), |
| 'Sidewalk': (233, 196, 106), |
| 'Building': (231, 111, 81), |
| 'Terrain': (42, 157, 143), |
| 'Parking': (204, 204, 204), |
| } |
| patches = [mpatches.Patch(color=[c/255.0 for c in color], label=label) for label, color in class_colors.items()] |
| plt.legend(handles=patches, loc='upper center', bbox_to_anchor=(0.5, -0.05), ncol=3) |
|
|
| fig.tight_layout(pad=pad) |