X-Git-Url: https://fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;f=maze.py;h=d5662f0500e24dad299210a69efed402e3db2339;hb=2be22c9825d8aebe8d184e9501355a31318abf2b;hp=f6715f022b4e7776c4f19ab17d1a55d3f78285e6;hpb=363ce48d64d1a036b86d29564bf6ad367126c2b1;p=picoclvr.git diff --git a/maze.py b/maze.py index f6715f0..d5662f0 100755 --- a/maze.py +++ b/maze.py @@ -15,11 +15,11 @@ v_empty, v_wall, v_start, v_goal, v_path = 0, 1, 2, 3, 4 def create_maze(h=11, w=17, nb_walls=8): assert h % 2 == 1 and w % 2 == 1 - a, k = 0, 0 + nb_attempts, nb_added_walls = 0, 0 - while k < nb_walls: + while nb_added_walls < nb_walls: while True: - if a == 0: + if nb_attempts == 0: m = torch.zeros(h, w, dtype=torch.int64) m[0, :] = 1 m[-1, :] = 1 @@ -29,6 +29,7 @@ def create_maze(h=11, w=17, nb_walls=8): r = torch.rand(4) if r[0] <= 0.5: + # Add a vertical wall i1, i2, j = ( int((r[1] * h).item()), int((r[2] * h).item()), @@ -36,10 +37,14 @@ def create_maze(h=11, w=17, nb_walls=8): ) i1, i2, j = i1 - i1 % 2, i2 - i2 % 2, j - j % 2 i1, i2 = min(i1, i2), max(i1, i2) + + # If this wall does not hit another one, add it if i2 - i1 > 1 and i2 - i1 <= h / 2 and m[i1 : i2 + 1, j].sum() <= 1: m[i1 : i2 + 1, j] = 1 break + else: + # Add an horizontal wall i, j1, j2 = ( int((r[1] * h).item()), int((r[2] * w).item()), @@ -47,15 +52,18 @@ def create_maze(h=11, w=17, nb_walls=8): ) i, j1, j2 = i - i % 2, j1 - j1 % 2, j2 - j2 % 2 j1, j2 = min(j1, j2), max(j1, j2) + + # If this wall does not hit another one, add it if j2 - j1 > 1 and j2 - j1 <= w / 2 and m[i, j1 : j2 + 1].sum() <= 1: m[i, j1 : j2 + 1] = 1 break - a += 1 - if a > 10 * nb_walls: - a, k = 0, 0 + nb_attempts += 1 - k += 1 + if nb_attempts > 10 * nb_walls: + nb_attempts, nb_added_walls = 0, 0 + + nb_added_walls += 1 return m @@ -221,8 +229,6 @@ def save_image( mazes, target_paths=None, predicted_paths=None, - score_paths=None, - score_truth=None, path_correct=None, path_optimal=None, ): @@ -242,17 +248,6 @@ def save_image( colors[mazes.reshape(-1)].reshape(mazes.size() + (-1,)).permute(0, 3, 1, 2) ) - if score_truth is not None: - score_truth = score_truth.cpu() - c_score_truth = score_truth.unsqueeze(1).expand(-1, 3, -1, -1) - c_score_truth = ( - c_score_truth * colors[4].reshape(1, 3, 1, 1) - + (1 - c_score_truth) * colors[0].reshape(1, 3, 1, 1) - ).long() - c_mazes = (mazes.unsqueeze(1) != v_empty) * c_mazes + ( - mazes.unsqueeze(1) == v_empty - ) * c_score_truth - imgs = c_mazes.unsqueeze(1) if target_paths is not None: @@ -275,18 +270,6 @@ def save_image( ) 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[0].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) - img = torch.tensor([255, 255, 0]).view(1, -1, 1, 1) # NxKxCxHxW @@ -307,6 +290,8 @@ def save_image( -1, -1, imgs.size(3) + 2, 1 + imgs.size(1) * (1 + imgs.size(4)) ).clone() + print(f"{img.size()=} {imgs.size()=}") + for k in range(imgs.size(1)): img[ :,