예제 #1
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def open_npy_and_obj(name_to_open_):
    """从路径指定的npy文件中读取并返回
    npy_m_:         抓取序列(只是针对某单个物体的抓取序列)
    obj_:                 待抓取物体的模型mesh(单个模型)
    ply_name_:  待抓取物体的路径
    object_name_:  待抓取物体的名称
    """
    npy_m_ = np.load(name_to_open_)
    file_dir = home_dir + "/PointNetGPD/data/ycb_meshes_google/"
    object_name_ = name_to_open_.split("/")[-1][:-4]
    #object_name_=object_name_.split("_")[-1][:-3]
    print(object_name_)
    ply_name_ = file_dir + object_name_ + "/google_512k/nontextured.ply"
    if not check_pcd_grasp_points:
        of = ObjFile(file_dir + object_name_ + "/google_512k/nontextured.obj")
        sf = SdfFile(file_dir + object_name_ + "/google_512k/nontextured.sdf")
        mesh = of.read()
        sdf = sf.read()
        obj_ = GraspableObject3D(sdf, mesh)
    else:
        cloud_path = home_dir + "/dataset/ycb_rgbd/" + object_name_ + "/clouds/"
        pcd_files = glob.glob(cloud_path + "*.pcd")
        obj_ = pcd_files
        obj_.sort()
    return npy_m_, obj_, ply_name_, object_name_
예제 #2
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    def test_contacts(self):
        num_samples = 128
        mu = 0.5
        num_faces = 8
        num_grasps = NUM_TEST_CASES
        of = ObjFile(OBJ_FILENAME)
        sf = SdfFile(SDF_FILENAME)
        mesh = of.read()
        sdf = sf.read()
        obj = GraspableObject3D(sdf, mesh)

        gripper = RobotGripper.load(GRIPPER_NAME)

        ags = UniformGraspSampler(gripper, CONFIG)
        grasps = ags.generate_grasps(obj, target_num_grasps=num_grasps)

        for grasp in grasps:
            success, c = grasp.close_fingers(obj)
            if success:
                c1, c2 = c

                # test friction cones
                fc1_exists, fc1, n1 = c1.friction_cone(num_cone_faces=num_faces,
                                                       friction_coef=mu)
                if fc1_exists:
                    self.assertEqual(fc1.shape[1], num_faces)
                    alpha = np.tile(fc1.T.dot(c1.normal), [3,1]).T
                    w = np.tile(c1.normal.reshape(3,1), [1,8]).T
                    tan_vecs = fc1.T - alpha * w
                    self.assertTrue(np.allclose(np.linalg.norm(tan_vecs, axis=1), mu))


                fc2_exists, fc2, n2 = c2.friction_cone(num_cone_faces=num_faces,
                                                       friction_coef=mu)
                if fc2_exists:
                    self.assertEqual(fc2.shape[1], num_faces)
                    alpha = np.tile(fc2.T.dot(c2.normal), [3,1]).T
                    w = np.tile(c2.normal.reshape(3,1), [1,8]).T
                    tan_vecs = fc2.T - alpha * w
                    self.assertTrue(np.allclose(np.linalg.norm(tan_vecs, axis=1), mu))

                # test reference frames
                T_contact1_obj = c1.reference_frame(align_axes=True)
                self.assertTrue(np.allclose(T_contact1_obj.z_axis, c1.in_direction))
                self.assertTrue(np.allclose(T_contact1_obj.translation, c1.point))
                for i in range(num_samples):
                    theta = 2 * i * np.pi / num_samples
                    v = np.cos(theta) * T_contact1_obj.x_axis + np.sin(theta) * T_contact1_obj.y_axis
                    self.assertLessEqual(v[0], T_contact1_obj.x_axis[0])
                    

                T_contact2_obj = c2.reference_frame(align_axes=True)
                self.assertTrue(np.allclose(T_contact2_obj.z_axis, c2.in_direction))
                self.assertTrue(np.allclose(T_contact2_obj.translation, c2.point))
                for i in range(num_samples):
                    theta = 2 * i * np.pi / num_samples
                    v = np.cos(theta) * T_contact2_obj.x_axis + np.sin(theta) * T_contact2_obj.y_axis
                    self.assertLessEqual(v[0], T_contact2_obj.x_axis[0])
예제 #3
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def open_npy_and_obj(name_to_open_):
    npy_m_ = np.load(name_to_open_)
    file_dir = home_dir + "/PointNetGPD/data/ycb-tools/models/ycb/"
    object_name_ = name_to_open_.split("/")[-1][:-4]
    ply_name_ = file_dir + object_name_ + "/google_512k/nontextured.ply"
    if not check_pcd_grasp_points:
        of = ObjFile(file_dir + object_name_ + "/google_512k/nontextured.obj")
        sf = SdfFile(file_dir + object_name_ + "/google_512k/nontextured.sdf")
        mesh = of.read()
        sdf = sf.read()
        obj_ = GraspableObject3D(sdf, mesh)
    else:
        cloud_path = home_dir + "/dataset/ycb_rgbd/" + object_name_ + "/clouds/"
        pcd_files = glob.glob(cloud_path + "*.pcd")
        obj_ = pcd_files
        obj_.sort()
    return npy_m_, obj_, ply_name_, object_name_
예제 #4
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    def test_antipodal_grasp_sampler(self):
        of = ObjFile(OBJ_FILENAME)
        sf = SdfFile(SDF_FILENAME)
        mesh = of.read()
        sdf = sf.read()
        obj = GraspableObject3D(sdf, mesh)

        gripper = RobotGripper.load(GRIPPER_NAME)

        ags = AntipodalGraspSampler(gripper, CONFIG)
        grasps = ags.generate_grasps(obj, target_num_grasps=NUM_TEST_CASES)

        # test with raw force closure function
        for i, grasp in enumerate(grasps):
            success, c = grasp.close_fingers(obj)
            if success:
                c1, c2 = c
                self.assertTrue(PointGraspMetrics3D.force_closure(c1, c2, CONFIG['sampling_friction_coef']))
예제 #5
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    def test_find_contacts(self):
        of = ObjFile(OBJ_FILENAME)
        sf = SdfFile(SDF_FILENAME)
        mesh = of.read()
        sdf = sf.read()
        obj = GraspableObject3D(sdf, mesh)

        surface_points, _ = obj.sdf.surface_points(grid_basis=False)
        indices = np.arange(surface_points.shape[0])
        for i in range(NUM_TEST_CASES):
            np.random.shuffle(indices)
            c1 = surface_points[0,:]
            c2 = surface_points[1,:]
            w = np.linalg.norm(c1 - c2) + 1e-2
            g = ParallelJawPtGrasp3D.grasp_from_endpoints(c1, c2, width=w)
            success, c = g.close_fingers(obj)
            if success:
                c1_est, c2_est = c
                np.assertTrue(np.allclose(c1, c1_est, atol=1e-3, rtol=0.1))
                np.assertTrue(np.allclose(c2, c2_est, atol=1e-3, rtol=0.1))
예제 #6
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    def test_force_closure(self):
        of = ObjFile(OBJ_FILENAME)
        sf = SdfFile(SDF_FILENAME)
        mesh = of.read()
        sdf = sf.read()
        obj = GraspableObject3D(sdf, mesh)

        for i in range(NUM_TEST_CASES):
            contacts, normals, _, mu, _ = random_force_closure_test_case(antipodal=True)
            c1 = Contact3D(obj, contacts[:,0])
            c1.normal = normals[:,0]
            c2 = Contact3D(obj, contacts[:,1])
            c2.normal = normals[:,1]
            self.assertTrue(PointGraspMetrics3D.force_closure(c1, c2, mu, use_abs_value=False))

        for i in range(NUM_TEST_CASES):
            contacts, normals, _, mu, _ = random_force_closure_test_case(antipodal=False)
            c1 = Contact3D(obj, contacts[:,0])
            c1.normal = normals[:,0]
            c2 = Contact3D(obj, contacts[:,1])
            c2.normal = normals[:,1]
            self.assertFalse(PointGraspMetrics3D.force_closure(c1, c2, mu, use_abs_value=False))
예제 #7
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def open_pickle_and_obj(name_to_open_):
    pickle_names_ = get_pickle_file_name(
        home_dir + "/code/grasp-pointnet/dex-net/apps/generated_grasps")
    suggestion_pickle = fuzzy_finder(name_to_open_, pickle_names_)
    if len(suggestion_pickle) != 1:
        print("Pickle file suggestions:", suggestion_pickle)
        exit("Name error for pickle file!")
    pickle_m_ = pickle.load(open(suggestion_pickle[0], 'rb'))

    file_dir = home_dir + "/dataset/ycb_meshes_google/objects"
    file_list_all = get_file_name(file_dir)
    new_sug = re.findall(r'_\d+', suggestion_pickle[0], flags=0)
    new_sug = new_sug[0].split('_')
    new_sug = new_sug[1]
    suggestion = fuzzy_finder(new_sug, file_list_all)

    # very dirty way to support name with "-a, -b etc."
    if len(suggestion) != 1:
        new_sug = re.findall(r'_\d+\W\w', suggestion_pickle[0], flags=0)
        new_sug = new_sug[0].split('_')
        new_sug = new_sug[1]
        suggestion = fuzzy_finder(new_sug, file_list_all)
        if len(suggestion) != 1:
            exit("Name error for obj file!")
    object_name_ = suggestion[0][len(file_dir) + 1:]
    ply_name_ = suggestion[0] + "/google_512k/nontextured.ply"
    if not check_pcd_grasp_points:
        of = ObjFile(suggestion[0] + "/google_512k/nontextured.obj")
        sf = SdfFile(suggestion[0] + "/google_512k/nontextured.sdf")
        mesh = of.read()
        sdf = sf.read()
        obj_ = GraspableObject3D(sdf, mesh)
    else:
        cloud_path = home_dir + "/code/grasp-pointnet/pointGPD/data/ycb_rgbd/" + object_name_ + "/clouds/"
        pcd_files = glob.glob(cloud_path + "*.pcd")
        obj_ = pcd_files
        obj_.sort()
    return pickle_m_, obj_, ply_name_, object_name_
예제 #8
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    def antipodal_grasp_sampler(self):
        of = ObjFile(OBJ_FILENAME)
        sf = SdfFile(SDF_FILENAME)
        mesh = of.read()
        sdf = sf.read()
        obj = GraspableObject3D(sdf, mesh)

        gripper = RobotGripper.load(GRIPPER_NAME)

        ags = AntipodalGraspSampler(gripper, CONFIG)
        grasps = ags.generate_grasps(obj, target_num_grasps=10)

        quality_config = GraspQualityConfigFactory.create_config(
            CONFIG['metrics']['force_closure'])
        quality_fn = GraspQualityFunctionFactory.create_quality_function(
            obj, quality_config)

        q_to_c = lambda quality: CONFIG['quality_scale']

        i = 0
        vis.figure()
        vis.mesh(obj.mesh.trimesh, style='surface')
        for grasp in grasps:
            print(grasp.frame)
            success, c = grasp.close_fingers(obj)
            if success:
                c1, c2 = c
                fn_fc = quality_fn(grasp).quality
                true_fc = PointGraspMetrics3D.force_closure(
                    c1, c2, quality_config.friction_coef)
        #print(grasp)
            T_obj_world = RigidTransform(from_frame='obj', to_frame='world')
            color = plt.get_cmap('hsv')(q_to_c(CONFIG['metrics']))[:-1]
            T_obj_gripper = grasp.gripper_pose(gripper)
            #vis.grasp(grasp,grasp_axis_color=color,endpoint_color=color)
            i += 1
        #T_obj_world = RigidTransform(from_frame='obj',to_frame='world')
        vis.show(False)
def open_pickle_and_obj(object_to_display):
    pickle_names_ = get_pickle_file_name(grasps_dir)
    suggestion_pickle = fuzzy_finder(object_to_display['object_name'],
                                     pickle_names_)
    if len(suggestion_pickle) != 1:
        print("Pickle file suggestions:", suggestion_pickle)
        exit("Name error for pickle file!")
    pickle_m_ = pickle.load(open(suggestion_pickle[0], 'rb'))

    object_name_ = object_to_display['object_name']
    ply_name_ = object_to_display['obj_file'].replace('.obj', '.stl')
    if not check_pcd_grasp_points:
        of = ObjFile(object_to_display['obj_file'])
        sf = SdfFile(object_to_display['sdf_file'])
        mesh = of.read()
        sdf = sf.read()
        obj_ = GraspableObject3D(sdf, mesh)
    else:
        cloud_path = home_dir + "/code/grasp-pointnet/pointGPD/data/ycb_rgbd/" + object_name_ + "/clouds/"
        pcd_files = glob.glob(cloud_path + "*.pcd")
        obj_ = pcd_files
        obj_.sort()
    return pickle_m_, obj_, ply_name_, object_name_
예제 #10
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    def test_grasp_quality_functions(self):
        num_grasps = NUM_TEST_CASES
        of = ObjFile(OBJ_FILENAME)
        sf = SdfFile(SDF_FILENAME)
        mesh = of.read()
        sdf = sf.read()
        obj = GraspableObject3D(sdf, mesh)

        gripper = RobotGripper.load(GRIPPER_NAME)

        ags = UniformGraspSampler(gripper, CONFIG)
        grasps = ags.generate_grasps(obj, target_num_grasps=num_grasps)

        # test with grasp quality function
        quality_config = GraspQualityConfigFactory.create_config(CONFIG['metrics']['force_closure'])
        quality_fn = GraspQualityFunctionFactory.create_quality_function(obj, quality_config)

        for i, grasp in enumerate(grasps):
            success, c = grasp.close_fingers(obj)
            if success:
                c1, c2 = c
                fn_fc = quality_fn(grasp).quality
                true_fc = PointGraspMetrics3D.force_closure(c1, c2, quality_config.friction_coef)
                self.assertEqual(fn_fc, true_fc)
예제 #11
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import os
import copy
import numpy as np
import open3d as o3d

from meshpy.obj_file import ObjFile
from meshpy.sdf_file import SdfFile

home_dir = os.environ['HOME']
file_dir = home_dir + "/Projects/GPD_PointNet/extract_normals"

of = ObjFile(file_dir + "/mesh_ascii_with_normal_crop.obj")
obj = of.read()
center_of_mass = obj.center_of_mass

print(center_of_mass)

cloud = o3d.io.read_point_cloud(file_dir + "/mesh_ascii_with_normal.ply")
mesh = o3d.io.read_triangle_mesh(file_dir + "/mesh_ascii_with_normal.ply")

mesh_sphere = o3d.geometry.create_mesh_sphere(radius=0.005)
mesh_sphere.compute_vertex_normals()
mesh_sphere.paint_uniform_color([1.0, 0.0, 0.0])

transformation = np.identity(4)
transformation[:3, 3] = center_of_mass
mesh_sphere.transform(transformation)

o3d.draw_geometries([cloud, mesh_sphere])

예제 #12
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    def test_new_database_and_graspable(self):
        # new database
        database = Hdf5Database(TEST_DB_NAME, access_level=READ_WRITE_ACCESS)
        database.close()
        self.assertTrue(database is not None)

        # new dataset
        database = Hdf5Database(TEST_DB_NAME, access_level=READ_WRITE_ACCESS)
        database.create_dataset(TEST_DS_NAME)
        database.close()
        self.assertTrue(database is not None)

        # read existing dataset
        database = Hdf5Database(TEST_DB_NAME, access_level=READ_WRITE_ACCESS)
        dataset = database.dataset(TEST_DS_NAME)
        self.assertTrue(database is not None and dataset is not None)
        
        # create graspable
        mass = 1.0
        CONFIG['obj_rescaling_type'] = RescalingType.RELATIVE
        mesh_processor = MeshProcessor(OBJ_FILENAME, CONFIG['cache_dir'])
        mesh_processor.generate_graspable(CONFIG)
        dataset.create_graspable(mesh_processor.key, mesh_processor.mesh,
                                 mesh_processor.sdf,
                                 mesh_processor.stable_poses,
                                 mass=mass)

        # read graspable and ensure data integrity
        obj = dataset[mesh_processor.key]
        self.assertTrue(obj.key == mesh_processor.key)
        write_vertices = mesh_processor.mesh.vertices
        write_triangles = mesh_processor.mesh.triangles
        write_sdf_data = mesh_processor.sdf.data
        write_stable_poses = mesh_processor.stable_poses
        load_vertices = obj.mesh.vertices
        load_triangles = obj.mesh.triangles
        load_sdf_data = obj.sdf.data
        load_stable_poses = dataset.stable_poses(obj.key)
        self.assertTrue(np.allclose(write_vertices, load_vertices))
        self.assertTrue(np.allclose(write_triangles, load_triangles))
        self.assertTrue(np.allclose(write_sdf_data, load_sdf_data))        
        self.assertTrue(obj.mass == mass)

        for wsp, lsp in zip(write_stable_poses, load_stable_poses):
            self.assertTrue(np.allclose(wsp.r, lsp.r))
            self.assertTrue(np.allclose(wsp.p, lsp.p))

        self.assertTrue(database is not None and dataset is not None)        

        # test loop access
        for obj in dataset:
            key = obj.key

        # test direct access
        obj = dataset[key]
        self.assertTrue(obj.key == key)

        # read / write meshing
        obj = dataset[dataset.object_keys[0]]        
        mesh_filename = dataset.obj_mesh_filename(obj.key, overwrite=True)
        f = ObjFile(mesh_filename)
        load_mesh = f.read()

        write_vertices = np.array(obj.mesh.vertices)
        write_triangles = np.array(obj.mesh.triangles)
        load_vertices = np.array(load_mesh.vertices)
        load_triangles = np.array(load_mesh.triangles)

        self.assertTrue(np.allclose(write_vertices, load_vertices, atol=1e-5))
        self.assertTrue(np.allclose(write_triangles, load_triangles, atol=1e-5))

        # test rendering images
        stable_poses = dataset.stable_poses(obj.key)
        stable_pose = stable_poses[0]

        # setup virtual camera
        width = CONFIG['width']
        height = CONFIG['height']
        f = CONFIG['focal']
        cx = float(width) / 2
        cy = float(height) / 2
        ci = CameraIntrinsics('camera', fx=f, fy=f, cx=cx, cy=cy,
                              height=height, width=width)
        vp = ViewsphereDiscretizer(min_radius=CONFIG['min_radius'],
                                   max_radius=CONFIG['max_radius'],
                                   num_radii=CONFIG['num_radii'],
                                   min_elev=CONFIG['min_elev']*np.pi,
                                   max_elev=CONFIG['max_elev']*np.pi,
                                   num_elev=CONFIG['num_elev'],
                                   num_az=CONFIG['num_az'],
                                   num_roll=CONFIG['num_roll'])
        vc = VirtualCamera(ci)

        # render segmasks and depth
        render_modes = [RenderMode.SEGMASK, RenderMode.DEPTH, RenderMode.SCALED_DEPTH]
        for render_mode in render_modes:
            rendered_images = vc.wrapped_images_viewsphere(obj.mesh, vp,
                                                           render_mode,
                                                           stable_pose)
            pre_store_num_images = len(rendered_images)
            dataset.store_rendered_images(obj.key, rendered_images,
                                          stable_pose_id=stable_pose.id,
                                          render_mode=render_mode)
            rendered_images = dataset.rendered_images(obj.key,
                                                      stable_pose_id=stable_pose.id,
                                                      render_mode=render_mode)
            post_store_num_images = len(rendered_images)
            self.assertTrue(pre_store_num_images == post_store_num_images)

        # test read / write grasp metrics
        metric_name = CONFIG['metrics'].keys()[0]
        metric_config = CONFIG['metrics'][metric_name]
        
        dataset.create_metric(metric_name, metric_config)
        load_metric_config = dataset.metric(metric_name)
        self.assertTrue(dataset.has_metric(metric_name))
        for key, value in metric_config.iteritems():
            if isinstance(value, dict):
                for k, v in value.iteritems():
                    self.assertTrue(load_metric_config[key][k] == v)
            else:
                self.assertTrue(load_metric_config[key] == value)                

        dataset.delete_metric(metric_name)
        self.assertFalse(dataset.has_metric(metric_name))

        # test read / write grasps
        num_grasps = NUM_DB_GRASPS
        database = Hdf5Database(TEST_DB_NAME, access_level=READ_WRITE_ACCESS)
        dataset = database.dataset(TEST_DS_NAME)
        key = dataset.object_keys[0]

        grasps = []
        grasp_metrics = {}
        for i in range(num_grasps):
            configuration = np.random.rand(9)
            configuration[3:6] = configuration[3:6] / np.linalg.norm(configuration[3:6])
            random_grasp = ParallelJawPtGrasp3D(configuration)
            grasps.append(random_grasp)

        dataset.store_grasps(key, grasps)
        loaded_grasps = dataset.grasps(key)
        for g in loaded_grasps:
            grasp_metrics[g.id] = {}
            grasp_metrics[g.id]['force_closure'] = 1 * (np.random.rand() > 0.5)

        for g1, g2 in zip(grasps, loaded_grasps):
            self.assertTrue(np.allclose(g1.configuration, g2.configuration))

        self.assertTrue(dataset.has_grasps(key))

        dataset.store_grasp_metrics(key, grasp_metrics)
        loaded_grasp_metrics = dataset.grasp_metrics(key, loaded_grasps)
        for i, metrics in loaded_grasp_metrics.iteritems():
            self.assertTrue(metrics['force_closure'] == grasp_metrics[i]['force_closure'])

        # remove grasps            
        dataset.delete_grasps(key)
        self.assertFalse(dataset.has_grasps(key))
        
        # remove rendered images
        render_modes = [RenderMode.SEGMASK, RenderMode.DEPTH, RenderMode.SCALED_DEPTH]
        for render_mode in render_modes:
            dataset.delete_rendered_images(key, stable_pose_id=stable_pose.id,
                                           render_mode=render_mode)

            rendered_images = dataset.rendered_images(key,
                                                      stable_pose_id=stable_pose.id,
                                                      render_mode=render_mode)
            self.assertTrue(len(rendered_images) == 0)

        # remove graspable    
        database = Hdf5Database(TEST_DB_NAME, access_level=READ_WRITE_ACCESS)
        dataset = database.dataset(TEST_DS_NAME)
        key = dataset.object_keys[0]
        dataset.delete_graspable(key)

        obj_deleted = False
        try:
            obj = dataset[key]
        except:
            obj_deleted = True
        self.assertTrue(obj_deleted)

        database.close()
예제 #13
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 def test_init_graspable(self):
     of = ObjFile(OBJ_FILENAME)
     sf = SdfFile(SDF_FILENAME)
     mesh = of.read()
     sdf = sf.read()
     obj = GraspableObject3D(sdf, mesh)
예제 #14
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def worker(i, sample_nums, grasp_amount, good_grasp):
    object_name = file_list_all[i][len(home_dir) + 35:]
    print('a worker of task {} start'.format(object_name))

    yaml_config = YamlConfig(home_dir +
                             "/code/grasp-pointnet/dex-net/test/config.yaml")
    gripper_name = 'robotiq_85'
    gripper = RobotGripper.load(
        gripper_name, home_dir + "/code/grasp-pointnet/dex-net/data/grippers")
    grasp_sample_method = "antipodal"
    if grasp_sample_method == "uniform":
        ags = UniformGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "gaussian":
        ags = GaussianGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "antipodal":
        ags = AntipodalGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "gpg":
        ags = GpgGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "point":
        ags = PointGraspSampler(gripper, yaml_config)
    else:
        raise NameError("Can't support this sampler")
    print("Log: do job", i)
    if os.path.exists(str(file_list_all[i]) + "/google_512k/nontextured.obj"):
        of = ObjFile(str(file_list_all[i]) + "/google_512k/nontextured.obj")
        sf = SdfFile(str(file_list_all[i]) + "/google_512k/nontextured.sdf")
    else:
        print("can't find any obj or sdf file!")
        raise NameError("can't find any obj or sdf file!")
    mesh = of.read()
    sdf = sf.read()
    obj = GraspableObject3D(sdf, mesh)
    print("Log: opened object", i + 1, object_name)

    force_closure_quality_config = {}
    canny_quality_config = {}
    fc_list_sub1 = np.arange(2.0, 0.75, -0.4)
    fc_list_sub2 = np.arange(0.5, 0.36, -0.05)
    fc_list = np.concatenate([fc_list_sub1, fc_list_sub2])
    for value_fc in fc_list:
        value_fc = round(value_fc, 2)
        yaml_config['metrics']['force_closure']['friction_coef'] = value_fc
        yaml_config['metrics']['robust_ferrari_canny'][
            'friction_coef'] = value_fc

        force_closure_quality_config[
            value_fc] = GraspQualityConfigFactory.create_config(
                yaml_config['metrics']['force_closure'])
        canny_quality_config[
            value_fc] = GraspQualityConfigFactory.create_config(
                yaml_config['metrics']['robust_ferrari_canny'])

    good_count_perfect = np.zeros(len(fc_list))
    count = 0
    minimum_grasp_per_fc = grasp_amount
    while np.sum(good_count_perfect < minimum_grasp_per_fc) != 0:
        grasps = ags.generate_grasps(obj,
                                     target_num_grasps=sample_nums,
                                     grasp_gen_mult=10,
                                     vis=False,
                                     random_approach_angle=True)
        count += len(grasps)
        for j in grasps:
            tmp, is_force_closure = False, False
            for ind_, value_fc in enumerate(fc_list):
                value_fc = round(value_fc, 2)
                tmp = is_force_closure
                is_force_closure = PointGraspMetrics3D.grasp_quality(
                    j, obj, force_closure_quality_config[value_fc], vis=False)
                if tmp and not is_force_closure:
                    if good_count_perfect[ind_ - 1] < minimum_grasp_per_fc:
                        canny_quality = PointGraspMetrics3D.grasp_quality(
                            j,
                            obj,
                            canny_quality_config[round(fc_list[ind_ - 1], 2)],
                            vis=False)
                        good_grasp.append((j, round(fc_list[ind_ - 1],
                                                    2), canny_quality))
                        good_count_perfect[ind_ - 1] += 1
                    break
                elif is_force_closure and value_fc == fc_list[-1]:
                    if good_count_perfect[ind_] < minimum_grasp_per_fc:
                        canny_quality = PointGraspMetrics3D.grasp_quality(
                            j, obj, canny_quality_config[value_fc], vis=False)
                        good_grasp.append((j, value_fc, canny_quality))
                        good_count_perfect[ind_] += 1
                    break
        print('Object:{} GoodGrasp:{}'.format(object_name, good_count_perfect))

    object_name_len = len(object_name)
    object_name_ = str(object_name) + " " * (25 - object_name_len)
    if count == 0:
        good_grasp_rate = 0
    else:
        good_grasp_rate = len(good_grasp) / count
    print('Gripper:{} Object:{} Rate:{:.4f} {}/{}'.format(
        gripper_name, object_name_, good_grasp_rate, len(good_grasp), count))
예제 #15
0
def worker(i, sample_nums, grasp_amount, good_grasp):  #主要是抓取采样器以及打分    100  20
    """
    brief: 对制定的模型,利用随机采样算法,进行抓取姿态的检测和打分
    param [in]  i 处理第i个mesh模型
    param [in]  sample_nums 每个对象模型返回的目标抓取数量
    param [in]  grasp_amount
    """

    #截取目标对象名称
    object_name = file_list_all[i][len(home_dir) + 35:]
    print('a worker of task {} start'.format(object_name))

    #读取初始配置文件,读取并在内存中复制了一份
    yaml_config = YamlConfig(home_dir + "/code/dex-net/test/config.yaml")
    #设置夹名称
    gripper_name = 'panda'
    #根据设置的夹爪名称加载夹爪配置
    gripper = RobotGripper.load(gripper_name,
                                home_dir + "/code/dex-net/data/grippers")
    #设置抓取采样的方法
    grasp_sample_method = "antipodal"
    if grasp_sample_method == "uniform":
        ags = UniformGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "gaussian":
        ags = GaussianGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "antipodal":
        #使用对映点抓取,输入夹爪与配置文件
        ags = AntipodalGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "gpg":
        ags = GpgGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "point":
        ags = PointGraspSampler(gripper, yaml_config)
    else:
        raise NameError("Can't support this sampler")
    print("Log: do job", i)
    #设置obj模型文件与sdf文件路径
    if os.path.exists(str(file_list_all[i]) +
                      "/google_512k/nontextured.obj") and os.path.exists(
                          str(file_list_all[i]) +
                          "/google_512k/nontextured.sdf"):
        of = ObjFile(str(file_list_all[i]) + "/google_512k/nontextured.obj")
        sf = SdfFile(str(file_list_all[i]) + "/google_512k/nontextured.sdf")
    else:
        print("can't find any obj or sdf file!")
        raise NameError("can't find any obj or sdf file!")

    #根据路径读取模型与sdf文件
    mesh = of.read()
    sdf = sf.read()
    #构建抓取模型类
    obj = GraspableObject3D(sdf, mesh)
    print("Log: opened object", i + 1, object_name)

    #########################################
    #设置
    force_closure_quality_config = {}  #设置力闭合  字典
    canny_quality_config = {}
    #生成一个起点是2.0终点是0.75   步长为-0.4  (递减)的等距数列fc_list_sub1 (2.0, 0.75, -0.4)
    fc_list_sub1 = np.arange(2.0, 0.75, -0.3)
    #生成一个起点是0.5终点是0.36   步长为-0.05的等距数列fc_list_sub2  (0.5, 0.36, -0.05)
    fc_list_sub2 = np.arange(0.5, 0.36, -0.1)

    #将上面两个向量接起来,变成一个长条向量,使用不同的步长,目的是为了在更小摩擦力的时候,有更多的分辨率
    fc_list = np.concatenate([fc_list_sub1, fc_list_sub2])
    print("判断摩擦系数")
    print(fc_list)
    for value_fc in fc_list:
        #对value_fc保留2位小数,四舍五入
        value_fc = round(value_fc, 2)
        #更改内存中配置中的摩擦系数,而没有修改硬盘中的yaml文件
        yaml_config['metrics']['force_closure']['friction_coef'] = value_fc
        yaml_config['metrics']['robust_ferrari_canny'][
            'friction_coef'] = value_fc
        #把每个摩擦力值当成键,
        force_closure_quality_config[
            value_fc] = GraspQualityConfigFactory.create_config(
                yaml_config['metrics']['force_closure'])
        canny_quality_config[
            value_fc] = GraspQualityConfigFactory.create_config(
                yaml_config['metrics']['robust_ferrari_canny'])

    #####################准备开始采样############################
    #填充一个与摩擦数量相同的数组,每个对应的元素都是0
    good_count_perfect = np.zeros(len(fc_list))
    count = 0
    #设置每个摩擦值需要计算的最少抓取数量 (根据指定输入值20)
    minimum_grasp_per_fc = grasp_amount
    #如果每个摩擦系数下,有效的抓取(满足力闭合或者其他判断标准)小于要求值,就一直循环查找,直到所有摩擦系数条件下至少都存在20个有效抓取
    while np.sum(good_count_perfect < minimum_grasp_per_fc) != 0:
        #开始使用antipodes sample获得对映随机抓取,此时并不判断是否满足力闭合,只是先采集满足夹爪条件的抓取
        #如果一轮多次随机采样之后,发现无法获得指定数量的随机抓取,就会重复迭代计算3次,之后放弃,并把已经找到的抓取返回来
        grasps = ags.generate_grasps(obj,
                                     target_num_grasps=sample_nums,
                                     grasp_gen_mult=10,
                                     max_iter=10,
                                     vis=False,
                                     random_approach_angle=True)
        count += len(grasps)
        #循环对每个采样抓取进行判断
        for j in grasps:
            tmp, is_force_closure = False, False
            #循环对某个采样抓取应用不同的抓取摩擦系数,判断是否是力闭合
            for ind_, value_fc in enumerate(fc_list):
                value_fc = round(value_fc, 2)
                tmp = is_force_closure
                #判断在当前给定的摩擦系数下,抓取是否是力闭合的
                is_force_closure = PointGraspMetrics3D.grasp_quality(
                    j, obj, force_closure_quality_config[value_fc], vis=False)
                #假设当前,1号摩擦力为1.6 抓取不是力闭合的,但是上一个0号摩擦系数2.0 条件下抓取是力闭合的
                if tmp and not is_force_closure:
                    #当0号2.0摩擦系数条件下采样的good抓取数量还不足指定的最低数量20
                    if good_count_perfect[ind_ - 1] < minimum_grasp_per_fc:
                        #以0号摩擦系数作为边界
                        canny_quality = PointGraspMetrics3D.grasp_quality(
                            j,
                            obj,
                            canny_quality_config[round(fc_list[ind_ - 1], 2)],
                            vis=False)
                        good_grasp.append((j, round(fc_list[ind_ - 1],
                                                    2), canny_quality))
                        #在0号系数的good抓取下计数加1
                        good_count_perfect[ind_ - 1] += 1
                    #当前抓取j的边界摩擦系数找到了,退出摩擦循环,判断下一个抓取
                    break
                #如果当前1号摩擦系数1.6条件下,该抓取j本身就是力闭合的,且摩擦系数是列表中的最后一个(所有的摩擦系数都判断完了)
                elif is_force_closure and value_fc == fc_list[-1]:
                    if good_count_perfect[ind_] < minimum_grasp_per_fc:
                        #以当前摩擦系数作为边界
                        canny_quality = PointGraspMetrics3D.grasp_quality(
                            j, obj, canny_quality_config[value_fc], vis=False)
                        good_grasp.append((j, value_fc, canny_quality))
                        good_count_perfect[ind_] += 1
                    #当前抓取j关于当前摩擦系数1.6判断完毕,而且满足所有的摩擦系数,就换到下一个摩擦系数
                    break
        print('Object:{} GoodGrasp:{}'.format(object_name,
                                              good_count_perfect))  #判断

    object_name_len = len(object_name)
    object_name_ = str(object_name) + " " * (25 - object_name_len)
    if count == 0:
        good_grasp_rate = 0
    else:
        good_grasp_rate = len(good_grasp) / count
    print('Gripper:{} Object:{} Rate:{:.4f} {}/{}'.format(
        gripper_name, object_name_, good_grasp_rate, len(good_grasp), count))
예제 #16
0
def worker(i, sample_nums, grasp_amount, good_grasp):
    object_name = file_list_all[i][len(home_dir) + 48:-12]
    print('a worker of task {} start'.format(object_name))

    yaml_config = YamlConfig(home_dir +
                             "/Projects/PointNetGPD/dex-net/test/config.yaml")
    gripper_name = 'robotiq_85'
    gripper = RobotGripper.load(
        gripper_name, home_dir + "/Projects/PointNetGPD/dex-net/data/grippers")
    grasp_sample_method = "antipodal"
    if grasp_sample_method == "uniform":
        ags = UniformGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "gaussian":
        ags = GaussianGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "antipodal":
        ags = AntipodalGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "gpg":
        ags = GpgGraspSampler(gripper, yaml_config)
    elif grasp_sample_method == "point":
        ags = PointGraspSampler(gripper, yaml_config)
    else:
        raise NameError("Can't support this sampler")
    print("Log: do job", i)
    if os.path.exists(str(file_list_all[i]) + "/nontextured.obj"):
        of = ObjFile(str(file_list_all[i]) + "/nontextured.obj")
        sf = SdfFile(str(file_list_all[i]) + "/nontextured.sdf")
    else:
        print("can't find any obj or sdf file!")
        raise NameError("can't find any obj or sdf file!")
    mesh = of.read()
    sdf = sf.read()
    obj = GraspableObject3D(sdf, mesh)
    print("Log: opened object", i + 1, object_name)

    force_closure_quality_config = {}
    canny_quality_config = {}
    fc_list_sub1 = np.arange(2.0, 0.75, -0.4)
    fc_list_sub2 = np.arange(0.5, 0.36, -0.05)
    fc_list = np.concatenate(
        [fc_list_sub1,
         fc_list_sub2])  # 摩擦系数列表  fc_list [2.  1.6  1.2  0.8  0.5  0.45 0.4 ]
    print("fc_list", fc_list, "fc_list[-1]", fc_list[-1])
    for value_fc in fc_list:
        value_fc = round(value_fc, 2)
        yaml_config['metrics']['force_closure']['friction_coef'] = value_fc
        yaml_config['metrics']['robust_ferrari_canny'][
            'friction_coef'] = value_fc

        force_closure_quality_config[
            value_fc] = GraspQualityConfigFactory.create_config(
                yaml_config['metrics']['force_closure'])
        canny_quality_config[
            value_fc] = GraspQualityConfigFactory.create_config(
                yaml_config['metrics']['robust_ferrari_canny'])

    good_count_perfect = np.zeros(len(fc_list))
    count = 0
    minimum_grasp_per_fc = grasp_amount

    # 各个摩擦系数生成一些抓取
    while np.sum(good_count_perfect < minimum_grasp_per_fc
                 ) != 0 and good_count_perfect[-1] < minimum_grasp_per_fc:
        print("[INFO]:good | mini", good_count_perfect, minimum_grasp_per_fc)
        print("[INFO]:good < mini", good_count_perfect < minimum_grasp_per_fc,
              np.sum(good_count_perfect < minimum_grasp_per_fc))
        grasps = ags.generate_grasps(
            obj,
            target_num_grasps=sample_nums,
            grasp_gen_mult=10,  # 生成抓取姿态
            vis=False,
            random_approach_angle=True)  # 随机调整抓取方向
        print("\033[0;32m%s\033[0m" %
              "[INFO] Worker{} generate {} grasps.".format(i, len(grasps)))
        count += len(grasps)
        for j in grasps:  # 遍历生成的抓取姿态, 判断是否为力闭合, 及其对应的摩擦系数
            tmp, is_force_closure = False, False
            for ind_, value_fc in enumerate(fc_list):  # 为每个摩擦系数分配抓取姿态
                value_fc = round(value_fc, 2)
                tmp = is_force_closure
                is_force_closure = PointGraspMetrics3D.grasp_quality(
                    j,
                    obj,  # 依据摩擦系数 value_fc 评估抓取姿态
                    force_closure_quality_config[value_fc],
                    vis=False)
                print("[INFO] is_force_closure:", is_force_closure,
                      "value_fc:", value_fc, "tmp:", tmp)
                if tmp and not is_force_closure:  # 前一个摩擦系数下为力闭合, 当前摩擦系数下非力闭合, 即找到此抓取对应的最小摩擦系数
                    print("[debug] tmp and not is_force_closure")
                    if good_count_perfect[ind_ - 1] < minimum_grasp_per_fc:
                        canny_quality = PointGraspMetrics3D.grasp_quality(
                            j,
                            obj,
                            canny_quality_config[round(fc_list[ind_ - 1], 2)],
                            vis=False)
                        good_grasp.append(
                            (j, round(fc_list[ind_ - 1],
                                      2), canny_quality))  # 保存前一个抓取
                        good_count_perfect[ind_ - 1] += 1
                    break

                elif is_force_closure and value_fc == fc_list[
                        -1]:  # 力闭合并且摩擦系数最小
                    print(
                        "[debug] is_force_closure and value_fc == fc_list[-1]")
                    if good_count_perfect[ind_] < minimum_grasp_per_fc:
                        canny_quality = PointGraspMetrics3D.grasp_quality(
                            j, obj, canny_quality_config[value_fc], vis=False)
                        good_grasp.append((j, value_fc, canny_quality))
                        good_count_perfect[ind_] += 1
                    break
        print('Worker:', i,
              'Object:{} GoodGrasp:{}'.format(object_name, good_count_perfect))

    object_name_len = len(object_name)
    object_name_ = str(object_name) + " " * (25 - object_name_len)
    if count == 0:
        good_grasp_rate = 0
    else:
        good_grasp_rate = len(good_grasp) / count
    print(
        'Worker:', i, 'Gripper:{} Object:{} Rate:{:.4f} {}/{}'.format(
            gripper_name, object_name_, good_grasp_rate, len(good_grasp),
            count))
예제 #17
0
def do_job(job_i):
    ii = np.random.choice(all_p.shape[0])
    show_grasp_norm(all_p[ii], surface_normal[ii])
    print("done job", job_i, ii)


if __name__ == '__main__':
    home_dir = os.environ['HOME']
    file_dir = home_dir + "/dataset/ycb_meshes_google/objects"
    mlab.figure(bgcolor=(1.0, 1.0, 1.0), fgcolor=(0.7, 0.7, 0.7))
    file_list_all = get_file_name(file_dir)
    object_numbers = file_list_all.__len__()
    i = 0  # index of objects to define which object to show
    if os.path.exists(str(file_list_all[i]) + "/google_512k/nontextured.obj"):
        of = ObjFile(str(file_list_all[i]) + "/google_512k/nontextured.obj")
        sf = SdfFile(str(file_list_all[i]) + "/google_512k/nontextured.sdf")

    else:
        print("can't find any obj or sdf file!")
        raise NameError("can't find any obj or sdf file!")
    mesh = of.read()
    sdf = sf.read()
    graspable = GraspableObject3D(sdf, mesh)
    print("Log: opened object")
    begin_time = time.time()
    surface_points, _ = graspable.sdf.surface_points(grid_basis=False)
    all_p = surface_points
    method = "voxel"
    if method == "random":
        surface_points = surface_points[np.random.choice(
예제 #18
0
if __name__ == '__main__':
    home_dir = os.environ['HOME']
    file_dir = home_dir + "/dataset/ycb_meshes_google/objects"

    #sf = SdfFile(home_dir + "/dataset/ycb_meshes_google/003_cracker_box/google_512k/nontextured.sdf")
    #of = ObjFile(home_dir + "/dataset/ycb_meshes_google/003_cracker_box/google_512k/nontextured.obj")
    #mesh = of.read()
    #sdf = sf.read()
    #obj = GraspableObject3D(sdf, mesh)
    #render_sdf(obj, "learn0")

    print("done")
    if len(sys.argv) > 1:
        sdf_filename = sys.argv[1]
    else:
        sdf_filename = DEF_SDF_FILE
    # sdf_file = read_sdf(sdf_filename)
    # render_sdf(sdf_file, 1)

    obj_files = get_file_name(file_dir)
    obj_files = obj_files[1:4]
    for items in obj_files:
        object_name = items[len(home_dir) + 35:]

        sf = SdfFile(items + "/google_512k/nontextured.sdf")
        of = ObjFile(items + "/google_512k/nontextured.obj")
        mesh = of.read()
        sdf = sf.read()
        obj = GraspableObject3D(sdf, mesh)
        render_sdf(obj, object_name)