def test_difference(self):
        _, image1, image2 = Loader.get_action('cube-1',
                                              '2018-10-22-23-42-52-096',
                                              ['ed-v', 'ed-after'])

        diff = image_difference(image1, image2)
        imageio.imwrite(str(self.file_path / f'gen-diff.png'), diff.mat)
Ejemplo n.º 2
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def get_mean(episode):
    _, image = Loader.get_action(episode[0], episode[1]['id'], 'ed-after')

    if image is None:
        return {'id': episode[1]['id'], 'mean': 1e6}

    return {'id': episode[1]['id'], 'mean': np.mean(image.mat)}
    def test_heatmap(self):
        _, image = Loader.get_action('cylinder-cube-1', '2019-03-26-09-51-08-827', 'ed-v')

        if TEST_WITH_GPU:
            model = Loader.get_model('cylinder-cube-1', 'model-6-arch-more-layer', output_layer='prob')

            heatmapper = Heatmap(InferencePlanarPose, model, box=self.box)
            heatmap = heatmapper.render(image)
            imageio.imwrite(str(self.file_path / f'gen-heatmap.png'), heatmap)
    def test_agent(self):
        _, image = Loader.get_action('cylinder-cube-1', '2019-03-26-09-08-16-480', 'ed-v')

        if TEST_WITH_GPU:
            agent = Agent()
            result = agent.infer([image], SelectionMethod.Max)

            self.assertEqual(result.safe, True)
            self.assertEqual(result.method, SelectionMethod.Max)
    def test_agent_predict(self):
        # 2019-03-11-14-56-07-284, 2019-03-14-11-26-17-352, 2019-03-12-16-14-54-658
        _, image = Loader.get_action('cylinder-cube-1', '2019-03-11-14-56-07-284', 'ed-v')

        if TEST_WITH_GPU:
            prediction_model = Loader.get_model('cylinder-cube-1', 'predict-generator-3', custom_objects={'_one_hot': one_hot_gen(4)})
            grasp_model = Loader.get_model('cylinder-cube-1', 'model-6-arch-more-layer', output_layer='prob')
            shift_model = Loader.get_model('shifting', 'model-1', output_layer='prob')

            agent = PredictAgent(prediction_model, grasp_model, shift_model)
            agent.predict_actions([image], SelectionMethod.Top5, N=5, verbose=True)
    def test_loader(self):
        for suffix in ['ed-v', 'ed-side_b-0_400']:
            action, image = Loader.get_action('cylinder-cube-1',
                                              '2019-06-25-15-49-13-551',
                                              suffix)

            draw_around_box(image, box=Config.box)
            imageio.imwrite(
                str(self.file_path / f'gen-draw-around-box-{suffix}.png'),
                image.mat)

            self.assertEqual(image.mat.dtype, np.uint16)
            self.assertEqual(image.pixel_size, 2000.0)
            self.assertEqual(action.method, SelectionMethod.Prob)
Ejemplo n.º 7
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def api_image(collection_name: str, episode_id: str, action_id: str,
              suffix: str):
    def send_image(image):
        _, image_encoded = cv2.imencode('.jpg', image)
        return flask.send_file(io.BytesIO(image_encoded),
                               mimetype='image/jpeg')

    def send_empty_image():
        empty = np.zeros((480, 752, 1))
        cv2.putText(empty,
                    '?', (310, 300),
                    cv2.FONT_HERSHEY_SIMPLEX,
                    6,
                    100,
                    thickness=6)
        return send_image(empty)

    if flask.request.values.get('pose'):
        action = Action(data=json.loads(flask.request.values.get('pose')))
        image = Loader.get_image(collection_name,
                                 episode_id,
                                 int(action_id),
                                 suffix,
                                 images=action.images)
    else:
        try:
            action, image = Loader.get_action(collection_name, episode_id,
                                              int(action_id), suffix)
        except Exception:
            app.logger.warn('Could not find image:', collection_name,
                            episode_id, action_id, suffix)
            return send_empty_image()

    if suffix not in action.images.keys():
        app.logger.warn(
            f'Could not find suffix {collection_name}-{episode_id}-{action_id}-{suffix}'
        )
        return send_empty_image()

    draw_pose(image, action.pose, convert_to_rgb=True)
    # draw_pose(image, action.pose, convert_to_rgb=True, reference_pose=action.images[suffix]['pose'])

    if flask.request.values.get('box', default=0, type=int):
        draw_around_box(image, box=Config.box, draw_lines=True)

    return send_image(image.mat / 255)
def print_before_after_image(episode_id: str):
    action, before_image, after_image = Loader.get_action(
        'shifting', episode_id, ['ed-v', 'ed-after'])

    area_before_image = get_area_of_interest(before_image,
                                             action.pose,
                                             size_cropped=(300, 300),
                                             size_result=(150, 150))
    area_after_image = get_area_of_interest(after_image,
                                            action.pose,
                                            size_cropped=(300, 300))

    white = [255 * 255] * 3
    draw_line(area_before_image,
              action.pose,
              Affine(0, 0),
              Affine(0.036, 0),
              color=white,
              thickness=2)
    draw_line(area_before_image,
              action.pose,
              Affine(0.036, 0.0),
              Affine(0.026, -0.008),
              color=white,
              thickness=2)
    draw_line(area_before_image,
              action.pose,
              Affine(0.036, 0.0),
              Affine(0.026, 0.008),
              color=white,
              thickness=2)

    cv2.imwrite(
        str(Path.home() / 'Desktop' / f'example-{episode_id}-before.png'),
        area_before_image.mat)
    cv2.imwrite(
        str(Path.home() / 'Desktop' / f'example-{episode_id}-after.png'),
        area_after_image.mat)

    print('---')
    print(episode_id)
Ejemplo n.º 9
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def save_episode(predictor, database, episode_id, reward=1, action_type=1):
    action, image, image_after = Loader.get_action(database, episode_id,
                                                   ['ed-v', 'ed-after'])

    draw_around_box(image, box=Config.box)
    draw_around_box(image_after, box=Config.box)

    # background_color = image.value_from_depth(get_distance_to_box(image, Config.box))

    area = get_area_of_interest(image,
                                action.pose,
                                size_cropped=(256, 256),
                                size_result=predictor.size)
    area_after = get_area_of_interest(image_after,
                                      action.pose,
                                      size_cropped=(256, 256),
                                      size_result=predictor.size)

    result = predictor.predict(area,
                               reward=reward,
                               action_type=action_type,
                               sampling=True,
                               number=20)

    save_dir = Path.home() / 'Desktop' / 'predict-examples' / episode_id
    save_dir.mkdir(exist_ok=True)
    cv2.imwrite(str(save_dir / f'{predictor.name}_s_bef.png'), area.mat)
    cv2.imwrite(str(save_dir / f'{predictor.name}_s_aft.png'), area_after.mat)
    cv2.imwrite(str(save_dir / f'{predictor.name}_result.png'),
                result[0] * 255)

    if predictor.uncertainty:
        result[result < 0.1] = np.nan
        uncertainty = np.nanvar(result, axis=0)
        uncertainty /= np.nanmax(uncertainty) * 0.25

        uncertainty = np.clip(uncertainty * 255, 0, 255).astype(np.uint8)
        uncertainty = cv2.applyColorMap(uncertainty, cv2.COLORMAP_JET)

        cv2.imwrite(str(save_dir / f'{predictor.name}_unc.png'), uncertainty)
Ejemplo n.º 10
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def api_image(episode_id):
    def send_image(image):
        _, image_encoded = cv2.imencode('.jpg', image)
        return flask.send_file(io.BytesIO(image_encoded),
                               mimetype='image/jpeg')

    def send_empty_image():
        empty = np.zeros((480, 752, 1))
        cv2.putText(empty,
                    '?', (310, 300),
                    cv2.FONT_HERSHEY_SIMPLEX,
                    6,
                    100,
                    thickness=6)
        return send_image(empty)

    database_name = flask.request.values.get('database')
    suffix = flask.request.values.get('suffix')

    if flask.request.values.get('pose'):
        action = Action(data=json.loads(flask.request.values.get('pose')))
        image = Loader.get_image(database_name,
                                 episode_id,
                                 suffix,
                                 images=action.images)
    else:
        action, image = Loader.get_action(database_name, episode_id, suffix)

    if not action or suffix not in action.images.keys() or not image:
        return send_empty_image()

    draw_pose(image,
              action.pose,
              convert_to_rgb=True,
              reference_pose=action.images['ed-v']['pose'])

    if int(flask.request.values.get('box', default=0)):
        draw_around_box(image, box=Config.box, draw_lines=True)

    return send_image(image.mat / 255)
Ejemplo n.º 11
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                        type=str,
                        required=True)
    parser.add_argument('-a', '--action', dest='action', type=int, default=0)
    parser.add_argument('-s',
                        '--suffix',
                        dest='suffix',
                        type=str,
                        default='ed-v')
    parser.add_argument('-m', '--model', dest='model', type=str)
    parser.add_argument('-d', '--draw', action='store_true')
    parser.add_argument('--area', action='store_true')
    parser.add_argument('--convert', action='store_true')
    parser.add_argument('--show', action='store_true')
    args = parser.parse_args()

    action, image = Loader.get_action(args.collection, args.episode,
                                      args.action, args.suffix)

    print('Action: ', action)

    if args.area:
        area_image = get_area_of_interest_new(image,
                                              action.pose,
                                              size_cropped=(200, 200))

        if args.convert:
            converter = Converter(grasp_z_offset=0.015, box=Config.box)
            converter.grasp_convert(action, [image])

        if args.show:
            cv2.imshow('area_image', area_image.mat)
import os

from agents.agent import Agent
from data.loader import Loader

os.environ['CUDA_DEVICE_ORDER'] = 'PCI_BUS_ID'
os.environ['CUDA_VISIBLE_DEVICES'] = str(1)

agent = Agent()

data = []

for i, (d, e) in enumerate(Loader.yield_episodes('cylinder-cube-mc-1')):
    action, image = Loader.get_action(d, e['id'], 'ed-v')

    if not hasattr(action, 'estimated_reward'):
        continue

    data.append({
        'id': e['id'],
        # 'old': action.estimated_reward,
        'new': agent.reward_for_action([image], action),
        'reward': action.reward
    })

sorted_data = sorted(data, key=lambda k: -abs(k['reward'] - k['new']))

for i, e in enumerate(sorted_data[:20]):
    print(i, e)
Ejemplo n.º 13
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from data.loader import Loader

data = []

for i, (d, e) in enumerate(Loader.yield_episodes('cube-1')):
    action = Loader.get_action(d, e['id'])

    if action.reward == 1 and action.final_pose and action.final_pose.d < 0.007:
        print(d, e['id'])
Ejemplo n.º 14
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from agents.agent_predict import Agent
from data.loader import Loader
from learning.utils.layers import one_hot_gen
from picking.param import SelectionMethod

# few objects (7-8): 2019-03-11-14-56-07-284
# many objects: 2019-07-01-14-03-11-150
# three cubes in a row: 2019-08-23-10-52-33-384

_, image = Loader.get_action('cylinder-cube-1', '2019-08-23-10-52-33-384',
                             'ed-v')

pred_model = Loader.get_model('cube-1', 'predict-bi-gen-5')

agent = Agent(pred_model)

# agent.plan_actions([image], SelectionMethod.Top5, depth=7, leaves=2, verbose=False)
# agent.plan_actions([image], SelectionMethod.Max, depth=7, leaves=1, verbose=False)
agent.plan_actions([image],
                   SelectionMethod.Top5,
                   depth=5,
                   leaves=3,
                   verbose=True)
Ejemplo n.º 15
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from tensorflow.keras import Model  # pylint: disable=E0401

from config import Config
from data.loader import Loader
from utils.heatmap import Heatmap

if __name__ == '__main__':
    save_path = Path(__file__).parent.parent.parent / 'test' / 'generated'

    collection = 'placing-3'
    episode_id = '2020-02-04-00-34-54-455'
    # episode_id = '2020-02-04-00-18-07-322'

    model = Loader.get_model('placing-3-32-part-type-2')

    action_grasp, image_grasp = Loader.get_action(collection, episode_id, 0,
                                                  'ed-v')
    action_place, image_place, image_goal = Loader.get_action(
        collection, episode_id, 1, ['ed-v', 'ed-goal'])

    g = model.get_layer('grasp')
    p = model.get_layer('place')

    grasp_output = ['reward_grasp', 'z_m0']
    place_output = ['reward_place', 'z_p']

    grasp_model = Model(inputs=g.input,
                        outputs=[g.get_layer(l).output for l in grasp_output])
    place_model = Model(inputs=p.input,
                        outputs=[p.get_layer(l).output for l in place_output])

    indices = np.array([[22, 25, 18, 1], [13, 21, 17, 2], [7, 19, 16, 2],
Ejemplo n.º 16
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import cv2
import numpy as np

from config import Config
from data.loader import Loader
from inference.planar import InferencePlanarPose
from picking.image import draw_pose


if __name__ == '__main__':
    os.environ['CUDA_DEVICE_ORDER'] = 'PCI_BUS_ID'
    os.environ['CUDA_VISIBLE_DEVICES'] = str(1)

    np.set_printoptions(suppress=True)

    action, image = Loader.get_action('cylinder-cube-mc-1', '2019-07-02-19-55-54-845', 'ed-v')

    inference = InferencePlanarPose(
        model=Loader.get_model('cylinder-cube-mc-1', 'model-1-mc'),
        box=Config.box,
        monte_carlo=160,
    )
    estimated_reward, estimated_reward_std = inference.infer_at_pose([image], action.pose)
    print(estimated_reward, estimated_reward_std)

    draw_pose(image, action.pose, convert_to_rgb=True)

    cv2.imshow('image', image.mat)
    cv2.waitKey(1500)
Ejemplo n.º 17
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from pathlib import Path
import time

import cv2

from config import Config
from data.loader import Loader
from utils.image import draw_around_box, draw_pose, get_area_of_interest_new

if __name__ == '__main__':
    lateral = False
    suffix = 'ed-lateral_b-0_400' if lateral else 'ed-v'
    action, image = Loader.get_action('placing-3', '2019-12-12-16-07-12-857',
                                      0, 'ed-v')

    # image = image.translate((0.0, 0.0, 0.05))
    # image = image.rotate_x(-0.3, (0.0, 0.25))

    draw_around_box(image, box=Config.box)
    # draw_pose(image, action.pose, convert_to_rgb=True)

    size_input = image.mat.shape[::-1]
    size_cropped = (200, 200)
    size_result = (32, 32)

    scale = 4
    image.mat = cv2.resize(image.mat,
                           (size_input[0] // scale, size_input[1] // scale))
    image.pixel_size /= scale

    s = time.time()
    def test_inside_box(self):
        action = Loader.get_action('cylinder-cube-1',
                                   '2019-06-25-14-59-51-451')

        conv = Converter(box=Config.box)
        self.assertFalse(conv.is_pose_inside_box(action.pose))
    #     Loader.get_model('cylinder-cube-mc-1', 'model-1-mc', output_layer='prob'),
    #     box=Config.box,
    #     monte_carlo=160
    # )
    inference = InferencePlanarPose(
        Loader.get_model('cylinder-cube-1',
                         'model-6-arch-more-layer',
                         output_layer='prob'),
        box=Config.box,
    )
    # inference = InferencePlanarPose(
    #   Loader.get_model('shifting', 'model-3'),
    #   box=Config.box,
    # )

    _, image = Loader.get_action('cylinder-cube-mc-1',
                                 '2019-07-02-13-27-22-246', 'ed-v')

    indexer = GraspIndexer(gripper_classes=Config.gripper_classes)

    converter = Converter(grasp_z_offset=Config.grasp_z_offset, box=Config.box)

    times = []
    for i in range(1):
        start = time.time()
        action = inference.infer([image], SelectionMethod.Top5, verbose=1)
        indexer.to_action(action)

        end = time.time()
        times.append(end - start)

    converter.calculate_pose(action, [image])
Ejemplo n.º 20
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                        default='placing-eval')
    parser.add_argument('-e',
                        '--episode',
                        dest='episode',
                        type=str,
                        required=True)
    parser.add_argument('-ca',
                        '--camera',
                        dest='camera',
                        type=str,
                        default='ed')
    parser.add_argument('--save', action='store_true')
    args = parser.parse_args()

    action, place_after, place_goal = Loader.get_action(
        args.collection, args.episode, 1,
        [args.camera + '-after', args.camera + '-goal'])
    new_pose = RobotPose(action.pose)

    if not args.save:

        def update_image():
            after_area = get_area_of_interest_new(place_after,
                                                  action.pose,
                                                  size_cropped=(200, 200))
            goal_area = get_area_of_interest_new(place_goal,
                                                 new_pose,
                                                 size_cropped=(200, 200))

            ontop = np.zeros((200, 200, 3), dtype=np.uint8)