(overlapArea_currentView, overlapArea_goalView), axis=2) elif input_type == 'optical_flow': overlapArea = genGtDenseCorrespondenseFlowMap( current_depth, goal_depth, current_pose, goal_pose)[:, :, :2] elif input_type == 'optical_flow_depth': opticalFlow = genGtDenseCorrespondenseFlowMap( current_depth, goal_depth, current_pose, goal_pose)[:, :, :2] overlapArea = np.concatenate((opticalFlow, current_depth), axis=2) elif input_type == 'optical_flow_depth_normalized': opticalFlow = genGtDenseCorrespondenseFlowMap( current_depth, goal_depth, current_pose, goal_pose)[:, :, :2] normalized_opticalFlow = normalize_opticalFlow(opticalFlow) normalized_depth = normalize_depth(current_depth) #normalized_depth = np.ones((256, 256, 1), np.float32) overlapArea = np.concatenate( (normalized_opticalFlow, normalized_depth), axis=2) elif input_type == 'optical_flow_depth_unnormalized_mask': opticalFlow, mask_flow = genGtDenseCorrespondenseFlowMapAndMask( current_depth, goal_depth, current_pose, goal_pose) opticalFlow = opticalFlow[:, :, :2] normalized_depth = current_depth * mask_flow #normalized_opticalFlow = normalize_opticalFlow(opticalFlow) normalized_depth = normalize_depth(normalized_depth) overlapArea = np.concatenate((opticalFlow, normalized_depth), axis=2) elif input_type == 'optical_flow_depth_siamese': opticalFlow = genGtDenseCorrespondenseFlowMap(
def main(scene_idx=0, point_a=0): #scene_idx = 1 ## necessary constants mapper_scene2points = get_mapper_scene2points() num_episodes = 200000 batch_size = 64 lambda_action = 0.25 action_table = buildActionMapper(flag_fewer_actions=True) seq_len = 50 Train_Scenes, Test_Scenes = get_train_test_scenes() if mode == 'Test': scene_name = Test_Scenes[scene_idx] elif mode == 'Train': scene_name = Train_Scenes[scene_idx] num_startPoints = len(mapper_scene2points[scene_name]) model_weights_save_path = '{}/{}'.format('/home/reza/Datasets/GibsonEnv/my_code/vs_controller/trained_dqn', approach) action_space = action_table.shape[0] ##============================================================================================================= ## rrt functions ## first figure out how to sample points from rrt graph rrt_directory = '/home/reza/Datasets/GibsonEnv/gibson/assets/dataset/{}_for_rrt'.format(scene_name) path_finder = rrt.PathFinder(rrt_directory) path_finder.load() num_nodes = len(path_finder.nodes_x) free = cv2.imread('/home/reza/Datasets/GibsonEnv/gibson/assets/dataset/{}_for_rrt/free.png'.format(scene_name), 0) ##------------------------------------------------------------------------------------------------------------ ## setup environment import gym, logging from mpi4py import MPI from gibson.envs.husky_env import HuskyNavigateEnv from baselines import logger import skimage.io from transforms3d.euler import euler2quat config_file = os.path.join('/home/reza/Datasets/GibsonEnv/my_code/CVPR_workshop', 'env_yamls', '{}_navigate.yaml'.format(scene_name)) env = HuskyNavigateEnv(config=config_file, gpu_count = 1) obs = env.reset() ## this line is important otherwise there will be an error like 'AttributeError: 'HuskyNavigateEnv' object has no attribute 'potential'' mapper_scene2z = get_mapper() def get_obs(current_pose): pos, orn = func_pose2posAndorn(current_pose, mapper_scene2z[scene_name]) env.robot.reset_new_pose(pos, orn) obs, _, _, _ = env.step(4) obs_rgb = obs['rgb_filled'] obs_depth = obs['depth'] #obs_normal = obs['normal'] return obs_rgb, obs_depth#, obs_normal def close_to_goal(pose1, pose2, thresh=0.20): L2_dist = math.sqrt((pose1[0] - pose2[0])**2 + (pose1[1] - pose2[1])**2) thresh_L2_dist = thresh theta_change = abs(pose1[2] - pose2[2])/math.pi * 180 return (L2_dist <= thresh_L2_dist) #and (theta_change <= 30) ##============================================================================================================ if mode == 'Test': base_folder = '/home/reza/Datasets/GibsonEnv/my_code/visual_servoing/sample_image_pairs_{}'.format('test') elif mode == 'Train': base_folder = '/home/reza/Datasets/GibsonEnv/my_code/visual_servoing/sample_image_pairs_{}'.format('train') import torch import torch.nn as nn import torch.nn.functional as F device = torch.device('cuda:0') ## Default CUDA device num_epochs = 200000 ## same as # of trajs sampled num_actions = action_table.shape[0] if input_type == 'both': perception = Perception_overlap(4).to(device) elif input_type == 'siamese': perception = Perception_siamese(4).to(device) elif input_type == 'optical_flow': perception = Perception_overlap(2).to(device) elif input_type == 'optical_flow_depth': perception = Perception_overlap(3).to(device) elif input_type == 'optical_flow_depth_normalized': perception = Perception_overlap(3).to(device) elif input_type == 'optical_flow_depth_unnormalized_mask': perception = Perception_overlap(3).to(device) elif input_type == 'optical_flow_depth_siamese': perception = Perception_siamese_fusion_new(3).to(device) elif input_type == 'optical_flow_memory': perception = Preception_overlap_resnet(4).to(device) else: perception = Perception_overlap(2).to(device) if input_type == 'siamese': model = DQN_OVERLAP_Controller(perception, num_actions, input_size=512).to(device) elif input_type == 'optical_flow_memory': model = DQN_OVERLAP_RESNET_Controller(perception, num_actions, input_size=512).to(device) else: model = DQN_OVERLAP_Controller(perception, num_actions, input_size=256).to(device) model.load_state_dict(torch.load('{}/dqn_epoch_{}_Uvalda.pt'.format(model_weights_save_path, num_epochs))) #model.eval() list_succ = [] list_collision = [] ## go through each point folder if mode == 'Test': a, b = 0, 1 elif mode == 'Train': a, b = 7, 8 #a, b = 0, 1 #for point_idx in range(0, num_startPoints): #for point_idx in range(a, b): for point_idx in range(point_a, point_a+1): print('point_idx = {}'.format(point_idx)) task_folder = '{}/{}/point_{}'.format('/home/reza/Datasets/GibsonEnv/my_code/vs_controller/for_video', scene_name, point_idx) create_folder(task_folder) ## read in start img and start pose point_image_folder = '{}/{}/point_{}'.format(base_folder, scene_name, point_idx) point_pose_npy_file = np.load('{}/{}/point_{}_poses.npy'.format(base_folder, scene_name, point_idx)) #start_img = cv2.imread('{}/{}.png'.format(point_image_folder, point_pose_npy_file[0]['img_name']))[:, :, ::-1] start_pose = point_pose_npy_file[0]['pose'] start_img, start_depth = get_obs(start_pose) start_depth = start_depth.copy() count_succ = 0 count_collision = 0 count_short_runs = 0 count_short_runs_collision = 0 count_short_runs_succ = 0 ## index 0 is the left image, so right_img_idx starts from index 1 #for right_img_idx in range(1, len(point_pose_npy_file)): for right_img_idx in range(1, 101): print('right_img_idx = {}'.format(right_img_idx)) run_folder = '{}/run_{}'.format(task_folder, right_img_idx) create_folder(run_folder) current_pose = start_pose right_img_name = point_pose_npy_file[right_img_idx]['img_name'] goal_pose = point_pose_npy_file[right_img_idx]['pose'] #goal_img = cv2.imread('{}/{}.png'.format(point_image_folder, right_img_name), 1)[:,:,::-1] goal_img, goal_depth = get_obs(goal_pose) goal_depth = goal_depth.copy() current_depth = start_depth.copy() episode_reward = 0 flag_succ = False poses_list = [] poses_list.append(start_pose) poses_list.append(goal_pose) poses_list.append([current_pose]) for i_step in range(seq_len): if input_type == 'both' or input_type == 'siamese': overlapArea_currentView = genOverlapAreaOnCurrentView(current_depth, goal_depth, current_pose, goal_pose)[:,:,:2] overlapArea_goalView = genOverlapAreaOnGoalView(current_depth, goal_depth, current_pose, goal_pose)[:,:,:2] overlapArea = np.concatenate((overlapArea_currentView, overlapArea_goalView), axis=2) elif input_type == 'optical_flow': overlapArea = genGtDenseCorrespondenseFlowMap(current_depth, goal_depth, current_pose, goal_pose)[:,:,:2] overlapArea = removeCorrespondenceRandomly(overlapArea, keep_prob=1.0) elif input_type == 'optical_flow_depth': opticalFlow = genGtDenseCorrespondenseFlowMap(current_depth, goal_depth, current_pose, goal_pose)[:,:,:2] overlapArea = np.concatenate((opticalFlow, current_depth), axis=2) elif input_type == 'optical_flow_depth_normalized': opticalFlow = genGtDenseCorrespondenseFlowMap(current_depth, goal_depth, current_pose, goal_pose)[:,:,:2] normalized_opticalFlow = normalize_opticalFlow(opticalFlow) normalized_depth = normalize_depth(current_depth) #normalized_depth = np.ones((256, 256, 1), np.float32) overlapArea = np.concatenate((normalized_opticalFlow, normalized_depth), axis=2) elif input_type == 'optical_flow_depth_unnormalized_mask': opticalFlow, mask_flow = genGtDenseCorrespondenseFlowMapAndMask(current_depth, goal_depth, current_pose, goal_pose) opticalFlow = opticalFlow[:, :, :2] normalized_depth = current_depth * mask_flow #normalized_opticalFlow = normalize_opticalFlow(opticalFlow) normalized_depth = normalize_depth(normalized_depth) overlapArea = np.concatenate((opticalFlow, normalized_depth), axis=2) elif input_type == 'optical_flow_depth_siamese': opticalFlow = genGtDenseCorrespondenseFlowMap(current_depth, goal_depth, current_pose, goal_pose)[:,:,:2] normalized_depth = normalize_depth(current_depth) #normalized_depth = np.ones((256, 256, 1), np.float32) overlapArea = np.concatenate((opticalFlow, normalized_depth), axis=2) #print('overlapArea.shape = {}'.format(overlapArea.shape)) elif input_type == 'optical_flow_memory': opticalFlow = genGtDenseCorrespondenseFlowMap(current_depth, goal_depth, current_pose, goal_pose)[:,:,:2] if i_step == 0: overlapArea = np.concatenate((opticalFlow, opticalFlow), axis=2) else: overlapArea = np.concatenate((old_opticalFlow, opticalFlow), axis=2) else: overlapArea = genOverlapAreaOnCurrentView(current_depth, goal_depth, current_pose, goal_pose)[:,:,:2] tensor_left = torch.tensor(overlapArea, dtype=torch.float32).to(device).unsqueeze(0).permute(0, 3, 1, 2) Qvalue_table = model(tensor_left) pred = Qvalue_table.max(1)[1].view(1, 1).detach().cpu().numpy().item() ## batch_size x 3 #print('Qvalue_table: {}'.format(Qvalue_table)) #print('pred = {}'.format(pred)) ## update current_pose vz, omegay = action_table[pred] #print('vz = {:.2f}, omegay = {:.2f}'.format(vz, omegay)) vx = 0.0 vx = vx * lambda_action vz = vz * lambda_action omegay = omegay * pi * lambda_action #print('actual velocity = {:.2f}, {:.2f}, {:.2f}'.format(vx, vz, omegay)) previous_pose = current_pose current_pose = update_current_pose(current_pose, vx, vz, omegay) poses_list[2].append(current_pose) flag_broken = False left_pixel = path_finder.point_to_pixel((previous_pose[0], previous_pose[1])) right_pixel = path_finder.point_to_pixel((current_pose[0], current_pose[1])) ## rrt.line_check returns True when there is no obstacle if not rrt.line_check(left_pixel, right_pixel, free): print('run into something') flag_broken = True break if close_to_goal(current_pose, goal_pose): print('success run') flag_succ = True break ## compute new_state current_img, current_depth = get_obs(current_pose) current_depth = current_depth.copy() #old_opticalFlow = opticalFlow.copy() np.save('{}/{}_waypoint_pose_list.npy'.format(run_folder, right_img_name[10:]), poses_list) #assert 1==2 if flag_succ: count_succ += 1 list_succ.append(point_pose_npy_file[right_img_idx]['img_name']) if findShortRangeImageName(right_img_name): count_short_runs_succ += 1 if flag_broken: count_collision += 1 list_collision.append(point_pose_npy_file[right_img_idx]['img_name']) if findShortRangeImageName(right_img_name): count_short_runs_collision += 1 if findShortRangeImageName(right_img_name): count_short_runs += 1 print('count_succ = {}'.format(count_succ)) print('count_collision = {}'.format(count_collision)) print('count_short_runs_succ = {}'.format(count_short_runs_succ)) print('count_short_runs_collision = {}'.format(count_short_runs_collision)) print('num_succ = {}, num_run = {}, count_short_runs_succ = {}, count_short_runs = {}'.format(count_succ, len(point_pose_npy_file), count_short_runs_succ, count_short_runs))