X-Git-Url: https://fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;f=maze.py;h=754cdeab2728b756bae6c17d017f1c95e680214d;hb=ffc0a92cddefa9fda9f25468c25ae1365b52be47;hp=d11ab6ef177fbef75dcd354e38da45e4df4f717f;hpb=39e24a2f9076db2d512791e723e7f2dc0275d99c;p=beaver.git diff --git a/maze.py b/maze.py index d11ab6e..754cdea 100755 --- a/maze.py +++ b/maze.py @@ -158,11 +158,11 @@ def create_maze_data( ): mazes = torch.empty(nb, height, width, dtype=torch.int64) paths = torch.empty(nb, height, width, dtype=torch.int64) - policies = torch.empty(nb, 4, height, width, dtype=torch.int64) + policies = torch.empty(nb, 4, height, width) for n in progress_bar(range(nb)): maze = create_maze(height, width, nb_walls) - i = (1 - maze).nonzero() + i = (maze == v_empty).nonzero() while True: start, goal = i[torch.randperm(i.size(0))[:2]] if (start - goal).abs().sum() >= dist_min: @@ -187,9 +187,14 @@ def create_maze_data( ###################################################################### -def save_image(name, mazes, target_paths, predicted_paths=None, path_correct=None): - mazes, target_paths = mazes.cpu(), target_paths.cpu() - +def save_image( + name, + mazes, + target_paths=None, + predicted_paths=None, + score_paths=None, + path_correct=None, +): colors = torch.tensor( [ [255, 255, 255], # empty @@ -200,22 +205,45 @@ def save_image(name, mazes, target_paths, predicted_paths=None, path_correct=Non ] ) - mazes = colors[mazes.reshape(-1)].reshape(mazes.size() + (-1,)).permute(0, 3, 1, 2) - target_paths = ( - colors[target_paths.reshape(-1)] - .reshape(target_paths.size() + (-1,)) - .permute(0, 3, 1, 2) + mazes = mazes.cpu() + + c_mazes = ( + colors[mazes.reshape(-1)].reshape(mazes.size() + (-1,)).permute(0, 3, 1, 2) ) - imgs = torch.cat((mazes.unsqueeze(1), target_paths.unsqueeze(1)), 1) + + imgs = c_mazes.unsqueeze(1) + + if target_paths is not None: + target_paths = target_paths.cpu() + + c_target_paths = ( + colors[target_paths.reshape(-1)] + .reshape(target_paths.size() + (-1,)) + .permute(0, 3, 1, 2) + ) + + imgs = torch.cat((imgs, c_target_paths.unsqueeze(1)), 1) if predicted_paths is not None: predicted_paths = predicted_paths.cpu() - predicted_paths = ( + c_predicted_paths = ( colors[predicted_paths.reshape(-1)] .reshape(predicted_paths.size() + (-1,)) .permute(0, 3, 1, 2) ) - imgs = torch.cat((imgs, predicted_paths.unsqueeze(1)), 1) + imgs = torch.cat((imgs, c_predicted_paths.unsqueeze(1)), 1) + + if score_paths is not None: + score_paths = score_paths.cpu() + c_score_paths = score_paths.unsqueeze(1).expand(-1, 3, -1, -1) + c_score_paths = ( + c_score_paths * colors[4].reshape(1, 3, 1, 1) + + (1 - c_score_paths) * colors[3].reshape(1, 3, 1, 1) + ).long() + c_score_paths = c_score_paths * (mazes.unsqueeze(1) == v_empty) + c_mazes * ( + mazes.unsqueeze(1) != v_empty + ) + imgs = torch.cat((imgs, c_score_paths.unsqueeze(1)), 1) # NxKxCxHxW if path_correct is None: