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Loads pre-computed 3D reconstruction results and runs physics simulation
with user-controlled forces, rendering frames and computing optical flow.
"""
import base64
import io
import os
from pathlib import Path
import cv2
import numpy as np
import torch
import trimesh
import genesis as gs
from omegaconf import OmegaConf
from simulation.utils import pt3d_to_gs, gs_to_pt3d, pose_to_transform_matrix
from simulation.case_simulation.case_handler import get_case_handler
from pytorch3d.renderer import PerspectiveCameras
from PIL import Image
_genesis_initialized = False
class InteractiveSimulator:
"""Wraps Genesis simulation for interactive force control."""
def __init__(self, demo_data_path: str, device: str = "cuda",
config_overrides: dict | None = None):
self.demo_data_path = Path(demo_data_path)
self.device = torch.device(device)
self.config = OmegaConf.to_container(
OmegaConf.load(self.demo_data_path / "config.yaml"), resolve=True
)
self.config["device"] = device
self.config["output_folder"] = str(self.demo_data_path / "sim_tmp")
os.makedirs(self.config["output_folder"], exist_ok=True)
self.config.setdefault("debug", False)
if config_overrides:
self.config.update(config_overrides)
self.dt = self.config.get("dt", 0.01)
self.substeps = self.config.get("substeps", 10)
self.frame_steps = self.config.get("frame_steps", 5)
self.material_type = self.config["material_type"]
self.crop_start = self.config.get("crop_start", 176)
self.object_masks_b64 = self._load_object_masks()
self.demo_case_handler = None
self._setup_scene()
def _setup_scene(self):
"""Load pre-computed data and build Genesis scene."""
meshes_dir = self.demo_data_path / "fg_meshes"
pcs_dir = self.demo_data_path / "fg_pcs"
mesh_files = sorted(meshes_dir.glob("mesh_*.obj"))
pc_files = sorted(pcs_dir.glob("pc_*.pt"))
self.fg_meshes = []
for mf in mesh_files:
mesh = trimesh.load(str(mf), process=False)
self.fg_meshes.append({
"vertices": torch.from_numpy(mesh.vertices).to(self.device).float(),
"faces": torch.from_numpy(mesh.faces).to(self.device).long(),
"colors": torch.from_numpy(
np.array(mesh.visual.vertex_colors)[:, :3] / 255.0
).to(self.device).float(),
})
self.fg_pcs_pt3d = []
self.fg_pcs_gs = []
for pf in pc_files:
data = torch.load(pf, map_location=self.device)
self.fg_pcs_pt3d.append({
"points": data["points"].to(self.device),
"colors": data["colors"].to(self.device),
})
self.fg_pcs_gs.append({
"points": pt3d_to_gs(data["points"].clone().to(self.device)),
"colors": data["colors"].to(self.device),
})
for mesh_info in self.fg_meshes:
mesh_info["vertices"] = pt3d_to_gs(mesh_info["vertices"])
cam_data = torch.load(self.demo_data_path / "camera.pt", map_location=self.device)
bg_data = torch.load(self.demo_data_path / "bg_points.pt", map_location=self.device)
gn_path = self.demo_data_path / "ground_plane_normal.npy"
self.ground_plane_normal = None
if gn_path.exists():
self.ground_plane_normal = pt3d_to_gs(np.load(gn_path))
if self.ground_plane_normal[2] < 0:
self.ground_plane_normal = -self.ground_plane_normal
self._setup_renderer(cam_data, bg_data)
self._setup_genesis()
def _setup_renderer(self, cam_data, bg_data):
camera = PerspectiveCameras(
K=cam_data["K"].to(self.device),
R=cam_data["R"].to(self.device),
T=cam_data["T"].to(self.device),
in_ndc=False,
image_size=((512, 512),),
device=self.device,
)
self.svr = _MinimalSVR(
config=self.config,
camera=camera,
focal_length=cam_data["focal_length"],
bg_points=bg_data["points"].to(self.device),
bg_points_colors=bg_data["colors"].to(self.device),
fg_pcs=[{
"points": pc["points"].clone(),
"colors": pc["colors"].clone(),
} for pc in self.fg_pcs_pt3d],
device=self.device,
)
def _setup_genesis(self):
all_obj_info = []
all_lower = torch.tensor([float("inf")] * 3, device=self.device)
all_upper = torch.tensor([float("-inf")] * 3, device=self.device)
for idx, mesh_info in enumerate(self.fg_meshes):
vmin = mesh_info["vertices"].min(0).values
vmax = mesh_info["vertices"].max(0).values
center = mesh_info["vertices"].mean(0)
size = vmax - vmin
mesh_info["vertices"] -= center
mesh_path = os.path.join(self.config["output_folder"], f"fg_mesh_{idx:02d}.obj")
t = trimesh.Trimesh(
vertices=mesh_info["vertices"].cpu().numpy(),
faces=mesh_info["faces"].cpu().numpy(),
vertex_colors=mesh_info["colors"].cpu().numpy(),
)
t.export(mesh_path)
all_obj_info.append({
"min": vmin, "max": vmax, "center": center, "size": size,
"mesh_path": mesh_path,
"vertices": mesh_info["vertices"] + center,
})
all_lower = torch.minimum(all_lower, vmin)
all_upper = torch.maximum(all_upper, vmax)
self.all_obj_info = all_obj_info
self.case_handler = get_case_handler(
self.config["example_name"], self.config, all_obj_info, self.device
)
self.case_handler.set_simulation_bounds(all_lower, all_upper)
sim_lower, sim_upper = self.case_handler.get_simulation_bounds()
gravity_dir = (
self.ground_plane_normal.copy()
if self.ground_plane_normal is not None
else np.array([0, 0, 1])
)
if "gravity" in self.config:
if isinstance(self.config["gravity"], (int, float)):
gravity = tuple(self.config["gravity"] * gravity_dir)
else:
gravity = tuple(pt3d_to_gs(np.array(self.config["gravity"])))
else:
gravity = tuple(-9.8 * gravity_dir)
pbd_gravity = None
if "pbd_gravity" in self.config:
if isinstance(self.config["pbd_gravity"], (int, float)):
pbd_gravity = tuple(self.config["pbd_gravity"] * gravity_dir)
else:
pbd_gravity = tuple(pt3d_to_gs(np.array(self.config["pbd_gravity"])))
mpm_gravity = None
if "mpm_gravity" in self.config:
if isinstance(self.config["mpm_gravity"], (int, float)):
mpm_gravity = tuple(self.config["mpm_gravity"] * gravity_dir)
else:
mpm_gravity = tuple(pt3d_to_gs(np.array(self.config["mpm_gravity"])))
global _genesis_initialized
if not _genesis_initialized:
gs.init(seed=self.config.get("seed", 0), precision="32",
backend=gs.cpu, logging_level="warning")
_genesis_initialized = True
self.scene = gs.Scene(
sim_options=gs.options.SimOptions(
dt=self.dt, gravity=gravity, substeps=self.substeps,
),
show_viewer=False,
vis_options=gs.options.VisOptions(
show_world_frame=False,
show_link_frame=False,
show_cameras=False,
plane_reflection=False,
ambient_light=(0.5, 0.5, 0.5),
lights=[{
"type": "directional",
"dir": (0, 0, 1),
"color": (1.0, 1.0, 1.0),
"intensity": 2.0,
}],
),
renderer=gs.renderers.Rasterizer(),
rigid_options=gs.options.RigidOptions(
dt=self.dt,
enable_collision=True,
enable_self_collision=False,
constraint_timeconst=0.02,
),
pbd_options=gs.options.PBDOptions(
lower_bound=tuple(sim_lower),
upper_bound=tuple(sim_upper),
particle_size=self.config.get("particle_size", 0.01),
gravity=pbd_gravity,
),
mpm_options=gs.options.MPMOptions(
lower_bound=tuple(sim_lower),
upper_bound=tuple(sim_upper),
grid_density=self.config.get("MPM_grid_density", 64),
particle_size=self.config.get("particle_size", 0.01),
gravity=mpm_gravity,
),
coupler_options=gs.options.LegacyCouplerOptions(
rigid_pbd=True, rigid_mpm=True,
),
)
obj_materials = []
obj_vis_modes = []
for mt in self.material_type:
mat, vis = self._get_material(mt)
obj_materials.append(mat)
obj_vis_modes.append(vis)
self.objs = self.case_handler.add_entities_to_scene(
self.scene, obj_materials, obj_vis_modes
)
self.case_handler.before_scene_building(
self.scene, self.objs, self.ground_plane_normal
)
self.debug_cam = None
self._debug_cam_failed = False
if self.config.get("debug", False):
self.debug_cam = self.scene.add_camera(
res=(512, 512),
pos=(0, -1, 0),
lookat=(0, 1, 0),
fov=self.config.get("fov_x_input", 60),
GUI=False,
)
self._debug_output = Path(self.config["output_folder"])
self._debug_gs_frames = self._debug_output / "gs_frames"
self._debug_gs_frames.mkdir(parents=True, exist_ok=True)
self.scene.build()
self.case_handler.after_scene_building()
for _ in range(3):
self.scene.step()
self.scene.reset()
self.case_handler.fix_particles()
self.initial_transform_matrix = {}
self.closest_indices = {}
for obj_idx, mt in enumerate(self.material_type):
if mt == "rigid":
self.objs[obj_idx].solver.update_vgeoms_render_T()
rigid_T = self.objs[obj_idx].solver._vgeoms_render_T
rigid_idx = self.objs[obj_idx].idx
self.initial_transform_matrix[obj_idx] = (
torch.tensor(rigid_T[rigid_idx, 0]).to(self.device).float()
)
elif mt in ("pbd_liquid", "pbd_cloth", "mpm_sand", "mpm_liquid",
"mpm_elastic", "mpm_snow", "mpm_elastic2plastic",
"pbd_elastic", "pbd_particle"):
self.closest_indices[obj_idx] = self._map_pc_to_particles(obj_idx)
self._init_particles_gpu = {
obj_idx: torch.tensor(
self.objs[obj_idx].init_particles,
device=self.device, dtype=torch.float32,
)
for obj_idx in self.closest_indices
}
self.step_count = 0
print("Genesis scene construction finished")
def set_demo_case_handler(self, handler):
self.demo_case_handler = handler
def move_to_device(self, device):
"""Move all renderer/simulation tensors to target device (CPU↔GPU)."""
dev = torch.device(device)
self.device = dev
# Move SVR (PyTorch3D renderer + camera + point clouds)
self.svr.move_to_device(dev)
# Move mesh data
for mesh in self.fg_meshes:
for k, v in list(mesh.items()):
if isinstance(v, torch.Tensor):
mesh[k] = v.to(dev)
# Move foreground point clouds
for pc_list in (self.fg_pcs_pt3d, self.fg_pcs_gs):
for pc in pc_list:
for k, v in list(pc.items()):
if isinstance(v, torch.Tensor):
pc[k] = v.to(dev)
# Move per-object transform matrices and initial particles
for k in list(self.initial_transform_matrix.keys()):
self.initial_transform_matrix[k] = self.initial_transform_matrix[k].to(dev)
for k in list(self._init_particles_gpu.keys()):
self._init_particles_gpu[k] = self._init_particles_gpu[k].to(dev)
# Move obj_info tensors (shared with case_handler by reference)
for obj_info in self.all_obj_info:
for k, v in list(obj_info.items()):
if isinstance(v, torch.Tensor):
obj_info[k] = v.to(dev)
def _load_object_masks(self):
masks_dir = self.demo_data_path / "fg_masks"
if not masks_dir.exists():
return []
mask_files = sorted(masks_dir.glob("mask_*.png"))
masks_b64 = []
for mf in mask_files:
with open(mf, "rb") as f:
masks_b64.append(base64.b64encode(f.read()).decode("ascii"))
return masks_b64
def step(self, extract_points=True):
"""Run one simulation step with interactive force applied."""
if self.demo_case_handler is not None:
self.demo_case_handler.apply_forces(self, self.step_count)
if self.debug_cam is not None and not self._debug_cam_failed:
try:
self.debug_cam.start_recording()
except Exception:
self._debug_cam_failed = True
self.scene.step()
if self.debug_cam is not None and not self._debug_cam_failed:
try:
render_out = self.debug_cam.render()
cv2.imwrite(
str(self._debug_gs_frames / f"{self.step_count:04d}.png"),
render_out[0],
)
except Exception:
self._debug_cam_failed = True
self.step_count += 1
if not extract_points:
return None
updated_all_obj_points = []
for obj_idx, mt in enumerate(self.material_type):
if mt == "rigid":
pos = self.objs[obj_idx].get_pos().cpu().numpy()
quat = self.objs[obj_idx].get_quat().cpu().numpy()
T = torch.from_numpy(
pose_to_transform_matrix(pos, quat)
).to(self.device).float()
T_inv = torch.linalg.inv(self.initial_transform_matrix[obj_idx])
real_T = T @ T_inv
pts_h = torch.cat([
self.fg_pcs_gs[obj_idx]["points"],
torch.ones(self.fg_pcs_gs[obj_idx]["points"].shape[0], 1, device=self.device),
], dim=1)
updated = (real_T.unsqueeze(0) @ pts_h.unsqueeze(-1)).squeeze(-1)[:, :3]
updated_all_obj_points.append(gs_to_pt3d(updated))
else:
p_start = self.objs[obj_idx].particle_start
p_end = self.objs[obj_idx].particle_end
state = self.objs[obj_idx].solver.get_state(0)
particles_now = state.pos[0, p_start:p_end].float()
init_particles_gpu = self._init_particles_gpu.get(obj_idx)
if init_particles_gpu is None:
init_particles_gpu = torch.tensor(
self.objs[obj_idx].init_particles,
device=self.device, dtype=torch.float32,
)
delta = particles_now - init_particles_gpu
pc_delta = delta[self.closest_indices[obj_idx]].mean(dim=1)
updated = self.fg_pcs_gs[obj_idx]["points"] + pc_delta
updated_all_obj_points.append(gs_to_pt3d(updated))
return updated_all_obj_points
def render_preview(self):
frame_pil, _, _ = self.svr.render(frame_id=0, save=False, mask=False)
return frame_pil
def render_and_flow(self, updated_points, frame_id=None):
"""Render the current frame and compute optical flow."""
self.svr.update_fg_obj_info(updated_points)
if frame_id is None:
frame_id = self.step_count
save_debug = self.config.get("debug", False)
frame_pil, fg_mask, mesh_mask = self.svr.render(
frame_id=frame_id, save=save_debug, mask=True,
)
if self.svr._last_optical_flow is not None:
flow_hw3 = self.svr._last_optical_flow
flow_2hw = flow_hw3[..., :2].transpose(2, 0, 1)
else:
flow_2hw = np.zeros((2, 512, 512), dtype=np.float32)
return frame_pil, flow_2hw, fg_mask, mesh_mask
def save_debug_outputs(self, sim_frames=None):
if not self.config.get("debug", False):
return
from simulation.utils import save_gif_from_image_folder, save_video_from_pil
output = self._debug_output
render_dir = self.svr.output_folder
if self.debug_cam is not None and not self._debug_cam_failed:
try:
self.debug_cam.stop_recording(
save_to_filename=str(output / "render_gs.mp4"), fps=10
)
except Exception as e:
print(f"[debug] cam.stop_recording failed: {e}")
if hasattr(self, '_debug_gs_frames') and self._debug_gs_frames.exists():
save_gif_from_image_folder(
str(self._debug_gs_frames), str(output / "simulated_frames_gs.gif")
)
svr_frames_dir = render_dir / "frames"
if svr_frames_dir.exists():
save_gif_from_image_folder(
str(svr_frames_dir), str(output / "simulated_frames.gif")
)
svr_flow_dir = render_dir / "optical_flow"
if svr_flow_dir.exists():
save_gif_from_image_folder(
str(svr_flow_dir), str(output / "flow_image.gif")
)
if sim_frames:
save_video_from_pil(
sim_frames, str(output / "simulated_frames.mp4"), fps=10
)
def reset(self):
self.step_count = 0
if self.demo_case_handler is not None:
self.demo_case_handler.reset_forces()
self.scene.reset()
self.case_handler.fix_particles()
self.svr.previous_frame_data = None
self.svr.optical_flow = np.array([])
self.svr._last_optical_flow = None
self.svr.cache_bg = None
self.svr._prev_fg_frags_idx = None
self.svr._prev_fg_frags_dists = None
def _map_pc_to_particles(self, obj_idx):
sim_particles = torch.tensor(
self.objs[obj_idx].init_particles, device=self.device
)
K = 256
num_closest = self.config.get("closest_points_num", 5)
chunks = torch.split(self.fg_pcs_gs[obj_idx]["points"], K)
indices = []
for chunk in chunks:
dists = torch.norm(
chunk.unsqueeze(1) - sim_particles.unsqueeze(0), dim=2
)
indices.append(
torch.topk(dists, k=num_closest, dim=1, largest=False)[1]
)
del dists
return torch.cat(indices)
def _get_material(self, mt):
c = self.config
if mt == "rigid":
return gs.materials.Rigid(
rho=c.get("rigid_rho", 1000.0),
friction=c.get("rigid_friction", 5.0),
coup_friction=c.get("rigid_coup_friction", 5),
coup_softness=c.get("rigid_coup_softness", 0.002),
), "visual"
elif mt == "pbd_cloth":
return gs.materials.PBD.Cloth(
rho=c.get("pbd_rho", 4.0),
static_friction=c.get("pbd_static_friction", 0.6),
kinetic_friction=c.get("pbd_kinetic_friction", 0.35),
stretch_compliance=c.get("pbd_stretch_compliance", 1e-7),
bending_compliance=c.get("pbd_bending_compliance", 1e-5),
stretch_relaxation=c.get("pbd_stretch_relaxation", 0.7),
bending_relaxation=c.get("pbd_bending_relaxation", 0.1),
air_resistance=c.get("pbd_air_resistance", 5e-3),
), "particle"
elif mt == "pbd_elastic":
return gs.materials.PBD.Elastic(
rho=c.get("pbd_elastic_rho", 300.0),
static_friction=c.get("pbd_elastic_static_friction", 0.15),
kinetic_friction=c.get("pbd_elastic_kinetic_friction", 0.0),
stretch_compliance=c.get("pbd_elastic_stretch_compliance", 0.0),
bending_compliance=c.get("pbd_elastic_bending_compliance", 0.0),
volume_compliance=c.get("pbd_elastic_volume_compliance", 0.0),
stretch_relaxation=c.get("pbd_elastic_stretch_relaxation", 0.1),
bending_relaxation=c.get("pbd_elastic_bending_relaxation", 0.1),
volume_relaxation=c.get("pbd_elastic_volume_relaxation", 0.1),
), "particle"
elif mt == "mpm_sand":
return gs.materials.MPM.Sand(
E=c.get("MPM_E", 1e6), nu=c.get("MPM_nu", 0.2),
rho=c.get("MPM_rho", 1000.0),
friction_angle=c.get("MPM_friction_angle", 45),
), "particle"
elif mt == "mpm_elastic":
return gs.materials.MPM.Elastic(
E=c.get("MPM_E", 1e6), nu=c.get("MPM_nu", 0.2),
rho=c.get("MPM_rho", 1000.0),
), "particle"
elif mt == "mpm_liquid":
return gs.materials.MPM.Liquid(
E=c.get("MPM_E", 1e6), nu=c.get("MPM_nu", 0.2),
rho=c.get("MPM_rho", 1000.0),
), "particle"
elif mt == "mpm_snow":
return gs.materials.MPM.Snow(
E=c.get("MPM_E", 1e6), nu=c.get("MPM_nu", 0.2),
rho=c.get("MPM_rho", 1000.0),
), "particle"
elif mt == "pbd_liquid":
return gs.materials.PBD.Liquid(
rho=c.get("pbd_rho", 1000.0),
density_relaxation=c.get("pbd_density_relaxation", 0.2),
viscosity_relaxation=c.get("pbd_viscosity_relaxation", 0.1),
), "particle"
elif mt == "pbd_particle":
return gs.materials.PBD.Particle(), "particle"
else:
raise NotImplementedError(f"Material {mt} not supported")
class _MinimalSVR:
"""Minimal point-cloud renderer with optical flow computation.
Provides render() and update_fg_obj_info() with pre-loaded data.
_proj_uv and save_optical_flow are inlined here to avoid importing
SingleViewReconstructor (which pulls in SAM3D, MoGe, FluxInpainter).
"""
def __init__(self, config, camera, focal_length, bg_points,
bg_points_colors, fg_pcs, device):
self.config = config
self.current_camera = camera
self.init_focal_length = focal_length
self.bg_points = bg_points
self.bg_points_colors = bg_points_colors
self.fg_pcs = fg_pcs
self.device = device
self.target_size = (512, 512)
self.previous_frame_data = None
self.optical_flow = np.array([])
self._last_optical_flow = None
self._prev_fg_frags_idx = None
self._prev_fg_frags_dists = None
self.franka_mesh = None
self.merge_mask = config.get("merge_mask", False)
self.cache_bg = None
self.fg_objects = []
self.output_folder = Path(config.get("output_folder", "/tmp/svr_render"))
self.output_folder_frames = self.output_folder / "frames"
self.output_folder_masks = self.output_folder / "masks"
self.output_folder_optical_flow = self.output_folder / "optical_flow"
if config.get("debug", False):
for d in [self.output_folder_frames, self.output_folder_masks,
self.output_folder_optical_flow]:
d.mkdir(parents=True, exist_ok=True)
self._build_cached_renderers()
def _build_cached_renderers(self):
from pytorch3d.renderer import (
PointsRenderer, PointsRasterizer, PointsRasterizationSettings,
AlphaCompositor,
)
cameras = self.current_camera
image_size = self.target_size[0]
fg_raster_settings = PointsRasterizationSettings(
image_size=image_size,
radius=self.config.get('fg_points_render_radius', 0.01),
points_per_pixel=30,
max_points_per_bin=20000,
bin_size=0,
)
self._fg_rasterizer = PointsRasterizer(
cameras=cameras, raster_settings=fg_raster_settings,
)
self._fg_renderer = PointsRenderer(
rasterizer=self._fg_rasterizer,
compositor=AlphaCompositor(),
)
flow_raster_settings = PointsRasterizationSettings(
image_size=image_size,
radius=self.config.get('fg_points_render_radius', 0.01),
points_per_pixel=30,
max_points_per_bin=20000,
bin_size=0,
)
self._flow_rasterizer = PointsRasterizer(
cameras=cameras, raster_settings=flow_raster_settings,
)
self._flow_renderer = PointsRenderer(
rasterizer=self._flow_rasterizer,
compositor=AlphaCompositor(),
)
def move_to_device(self, device):
"""Move all tensors to target device and rebuild renderers."""
from pytorch3d.renderer import PerspectiveCameras
cam = self.current_camera
self.current_camera = PerspectiveCameras(
K=cam.K.to(device),
R=cam.R.to(device),
T=cam.T.to(device),
in_ndc=False,
image_size=((512, 512),),
device=device,
)
self.bg_points = self.bg_points.to(device)
self.bg_points_colors = self.bg_points_colors.to(device)
for pc in self.fg_pcs:
pc['points'] = pc['points'].to(device)
pc['colors'] = pc['colors'].to(device)
self.device = device
self.cache_bg = None # stale after device change; recomputed on next render
self._build_cached_renderers()
def update_fg_obj_info(self, all_obj_points):
for idx, pts in enumerate(all_obj_points):
self.fg_pcs[idx]["points"] = pts.clone()
def _proj_uv(self, xyz, camera, image_size):
"""Project 3D points to 2D UV coordinates."""
device = xyz.device
K_4x4 = camera.K[0]
intr = K_4x4[:3, :3].clone()
w2c = torch.eye(4).float().to(device)
R_w2c = camera.R[0]
T_w2c = camera.T[0]
w2c[:3, :3] = R_w2c
w2c[:3, 3] = T_w2c
intr[2, 2] = 1.0
intr = intr.to(device)
c_xyz = (w2c[:3, :3] @ xyz.T).T + w2c[:3, 3]
i_xyz = (intr @ c_xyz.T).T
uv = i_xyz[:, :2] / i_xyz[:, -1:].clip(1e-3)
uv = image_size - uv
return uv
def save_optical_flow(self, optical_flow, valid_mask, frame_id):
"""Save optical flow visualization to disk (debug mode only)."""
flow_x = optical_flow[:, :, 0].cpu().numpy()
flow_y = optical_flow[:, :, 1].cpu().numpy()
valid_mask_np = valid_mask.cpu().numpy()
angle = np.arctan2(-flow_y, flow_x)
hsv = np.zeros((optical_flow.shape[0], optical_flow.shape[1], 3), dtype=np.uint8)
hsv[..., 0] = (angle + np.pi) / (2 * np.pi) * 179
hsv[..., 1] = 255
hsv[..., 2] = 255
hsv[~valid_mask_np] = 0
flow_rgb = cv2.cvtColor(hsv, cv2.COLOR_HSV2RGB)
import matplotlib.pyplot as plt
fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(12, 6))
ax1.imshow(flow_rgb)
ax1.set_title(f'Optical Flow Direction - Frame {frame_id}')
ax1.axis('off')
ax2.axis('off')
plt.tight_layout()
plt.savefig(
f'{self.output_folder_optical_flow}/optical_flow_frame_{frame_id:04d}.png',
dpi=150, bbox_inches='tight',
)
plt.close()
def render(self, render_bg=True, render_obj=True, render_mesh=True,
frame_id=0, save=False, mask=True, compute_optical_flow=True):
from pytorch3d.structures import Pointclouds
from torchvision.transforms import ToPILImage
cameras = self.current_camera
image_size = self.target_size[0]
# Background (cached after first render)
if render_bg and self.cache_bg is None:
from pytorch3d.renderer import (
PointsRenderer, PointsRasterizer, PointsRasterizationSettings,
AlphaCompositor,
)
bg_pc = Pointclouds(
points=[self.bg_points], features=[self.bg_points_colors],
)
bg_raster_settings = PointsRasterizationSettings(
image_size=image_size,
radius=self.config.get('bg_points_render_radius', 0.0001),
points_per_pixel=30,
)
bg_renderer = PointsRenderer(
rasterizer=PointsRasterizer(
cameras=cameras, raster_settings=bg_raster_settings,
),
compositor=AlphaCompositor(),
)
self.cache_bg = bg_renderer(bg_pc)
if render_bg and self.cache_bg is not None:
bg_image = self.cache_bg
else:
bg_image = torch.zeros(1, image_size, image_size, 3, device=self.device)
base_rgb = bg_image[0].clone()
final_rgb = base_rgb.clone()
# Foreground
all_fg_points = []
all_fg_colors = []
for pc_info in self.fg_pcs:
all_fg_points.append(pc_info['points'])
all_fg_colors.append(pc_info['colors'])
combined_fg_points = torch.cat(all_fg_points, dim=0)
combined_fg_colors = torch.cat(all_fg_colors, dim=0)
flow_rendered_points = combined_fg_points.clone()
combined_rgba = torch.cat([
combined_fg_colors,
torch.ones_like(combined_fg_colors[..., :1]),
], dim=-1)
fg_pc = Pointclouds(points=[combined_fg_points], features=[combined_rgba])
fragments = self._fg_rasterizer(fg_pc)
r = self._fg_rasterizer.raster_settings.radius
dists2 = fragments.dists.permute(0, 3, 1, 2)
weights = 1 - dists2 / (r * r)
fg_image = self._fg_renderer.compositor(
fragments.idx.long().permute(0, 3, 1, 2),
weights,
fg_pc.features_packed().permute(1, 0),
)
fg_image = fg_image.permute(0, 2, 3, 1)
fg_rgb = fg_image[0, ..., :3]
fg_alpha = fg_image[0, ..., 3:4]
fg_depth = fragments.zbuf[0, ..., 0]
fg_points_mask = torch.where(
fg_alpha.squeeze(-1) > self.config['alpha_threshold'], 1.0, 0.0,
).unsqueeze(-1)
fg_mask_2d = fg_points_mask.squeeze(-1)
final_rgb = fg_rgb * fg_mask_2d.unsqueeze(-1) + final_rgb * (1.0 - fg_mask_2d.unsqueeze(-1))
# Mesh
mesh_mask = torch.zeros(image_size, image_size, 1, dtype=torch.float32, device=self.device)
if render_mesh and self.franka_mesh is not None:
from pytorch3d.renderer import (
MeshRenderer, MeshRasterizer, SoftPhongShader,
RasterizationSettings, BlendParams,
)
from pytorch3d.structures import Meshes
from pytorch3d.renderer.mesh.textures import TexturesVertex
vertices = self.franka_mesh['vertices']
faces = self.franka_mesh['faces']
colors = self.franka_mesh['colors']
flow_rendered_points = torch.cat([flow_rendered_points, vertices], dim=0)
if not isinstance(vertices, torch.Tensor):
vertices = torch.tensor(vertices, dtype=torch.float32, device=self.device)
if not isinstance(faces, torch.Tensor):
faces = torch.tensor(faces, dtype=torch.long, device=self.device)
if not isinstance(colors, torch.Tensor):
colors = torch.tensor(colors, dtype=torch.float32, device=self.device)
vertices = vertices.to(self.device)
faces = faces.to(self.device)
colors = colors.to(self.device)
textures = TexturesVertex(verts_features=[colors])
combined_mesh = Meshes(verts=[vertices], faces=[faces], textures=textures)
mesh_raster_settings = RasterizationSettings(
image_size=image_size, blur_radius=0.0, faces_per_pixel=10,
)
mesh_rasterizer = MeshRasterizer(cameras=cameras, raster_settings=mesh_raster_settings)
mesh_renderer = MeshRenderer(
rasterizer=mesh_rasterizer,
shader=SoftPhongShader(
device=self.device, cameras=cameras,
blend_params=BlendParams(background_color=(0.0, 0.0, 0.0)),
),
)
mesh_image = mesh_renderer(combined_mesh)
mesh_rgb = mesh_image[0, ..., :3]
mesh_alpha = mesh_image[0, ..., 3:4]
mesh_fragments = mesh_rasterizer(combined_mesh)
mesh_depth = mesh_fragments.zbuf[0, ..., 0]
mesh_mask_2d = torch.where(mesh_alpha.squeeze(-1) > 0.01, 1.0, 0.0)
fg_depth_valid = torch.where(fg_mask_2d > 0, fg_depth, torch.tensor(float('inf'), device=self.device))
mesh_depth_valid = torch.where(mesh_mask_2d > 0, mesh_depth, torch.tensor(float('inf'), device=self.device))
mesh_closer_bool = (mesh_depth_valid < fg_depth_valid) & (mesh_mask_2d > 0)
mesh_closer_float = mesh_closer_bool.float()
mesh_mask = mesh_closer_float.unsqueeze(-1)
mesh_closer_3d = mesh_closer_float.unsqueeze(-1)
final_rgb = mesh_rgb * mesh_closer_3d + final_rgb * (1.0 - mesh_closer_3d)
fg_points_mask = torch.where(
mesh_closer_bool.unsqueeze(-1),
torch.zeros_like(fg_points_mask), fg_points_mask,
)
# Optical flow
if compute_optical_flow and self.previous_frame_data is not None:
optical_flow = self._compute_optical_flow_pytorch3d_style(
current_fg_points=flow_rendered_points,
prev_fg_points=self.previous_frame_data['flow_rendered_points'],
current_camera=cameras,
prev_camera=self.previous_frame_data['camera'],
image_size=image_size,
frame_id=frame_id,
prev_frags_idx=self._prev_fg_frags_idx,
prev_frags_dists=self._prev_fg_frags_dists,
)
flow_np = optical_flow.cpu().numpy()
self._last_optical_flow = flow_np
if self.config.get('debug', False):
if self.optical_flow.size == 0:
self.optical_flow = np.expand_dims(flow_np, 0)
else:
self.optical_flow = np.concatenate([
self.optical_flow, np.expand_dims(flow_np, 0),
])
if self.franka_mesh is None:
self._prev_fg_frags_idx = fragments.idx
self._prev_fg_frags_dists = fragments.dists
else:
self._prev_fg_frags_idx = None
self._prev_fg_frags_dists = None
if save:
if mask:
points_mask_path = self.output_folder_masks / f"points_mask_{frame_id:04d}.png"
points_mask_to_save = fg_points_mask.squeeze(2) if fg_points_mask.dim() == 3 else fg_points_mask
ToPILImage()(points_mask_to_save.unsqueeze(0).clamp(0, 1).cpu()).save(points_mask_path.as_posix())
mesh_mask_path = self.output_folder_masks / f"mesh_mask_{frame_id:04d}.png"
mesh_mask_to_save = mesh_mask.squeeze(2) if mesh_mask.dim() == 3 else mesh_mask
ToPILImage()(mesh_mask_to_save.unsqueeze(0).clamp(0, 1).cpu()).save(mesh_mask_path.as_posix())
image_pil = ToPILImage()(final_rgb.permute(2, 0, 1).clamp(0, 1).cpu())
image_path = self.output_folder_frames / f"frame_{frame_id:04d}.png"
image_pil.save(image_path.as_posix())
else:
image_pil = ToPILImage()(final_rgb.permute(2, 0, 1).clamp(0, 1).cpu())
self.previous_frame_data = {
'camera': cameras,
'bg_points': self.bg_points,
'flow_rendered_points': flow_rendered_points,
}
return image_pil, fg_points_mask, mesh_mask
def _compute_optical_flow_pytorch3d_style(self, current_fg_points, prev_fg_points,
current_camera, prev_camera,
image_size=512, frame_id=0,
prev_frags_idx=None,
prev_frags_dists=None):
from pytorch3d.structures import Pointclouds
if current_fg_points.shape[0] > prev_fg_points.shape[0]:
current_fg_points = current_fg_points[:prev_fg_points.shape[0]]
elif prev_fg_points.shape[0] > current_fg_points.shape[0]:
prev_more = prev_fg_points[-(prev_fg_points.shape[0] - current_fg_points.shape[0]):]
current_fg_points = torch.cat([current_fg_points, prev_more], dim=0)
current_uv = self._proj_uv(current_fg_points, current_camera, image_size)
prev_uv = self._proj_uv(prev_fg_points, prev_camera, image_size)
delta_uv = current_uv - prev_uv
flow_colors = torch.cat([delta_uv, torch.zeros_like(delta_uv[:, :1])], dim=-1)
xy_flow = flow_colors[:, :2]
magnitude = torch.sqrt(xy_flow[:, 0] ** 2 + xy_flow[:, 1] ** 2)
zero_flow_mask = magnitude < 1e-4
min_val = xy_flow.min()
max_val = xy_flow.max()
if max_val - min_val > 1e-4:
flow_colors[:, :2] = 0.1 + (xy_flow - min_val) / (max_val - min_val) * 0.8
flow_colors[zero_flow_mask, :2] = 0.0
else:
flow_colors[:, :2] = 0.5
flow_colors = torch.clamp(flow_colors, 0, 1)
flow_rgba = torch.cat([flow_colors, torch.ones_like(flow_colors[..., :1])], dim=-1)
if prev_frags_idx is not None and prev_frags_dists is not None:
r = self._fg_rasterizer.raster_settings.radius
dists2 = prev_frags_dists.permute(0, 3, 1, 2)
prev_weights = 1 - dists2 / (r * r)
flow_image_raw = self._fg_renderer.compositor(
prev_frags_idx.long().permute(0, 3, 1, 2),
prev_weights,
flow_rgba.permute(1, 0),
)
flow_image = flow_image_raw.permute(0, 2, 3, 1)
else:
point_cloud = Pointclouds(points=[prev_fg_points], features=[flow_rgba])
flow_image = self._flow_renderer(point_cloud)
flow_alpha = flow_image[0, :, :, 3]
valid_mask = flow_alpha > self.config['alpha_threshold']
optical_flow = torch.zeros(image_size, image_size, 3, device=self.device)
if valid_mask.sum() > 0 and max_val - min_val > 1e-4:
rendered_flow = flow_image[0, :, :, :2][valid_mask]
zero_pixels = torch.all(rendered_flow < 0.05, dim=-1)
normal_pixels = ~zero_pixels
full_flow = torch.zeros_like(rendered_flow)
if normal_pixels.sum() > 0:
full_flow[normal_pixels] = (
(rendered_flow[normal_pixels] - 0.1) / 0.8 * (max_val - min_val) + min_val
)
optical_flow[:, :, :2][valid_mask] = full_flow
if self.config.get('debug', False):
meaningful_mask = valid_mask.clone()
valid_coords = torch.where(valid_mask)
meaningful_mask[valid_coords[0][zero_pixels], valid_coords[1][zero_pixels]] = False
self.save_optical_flow(optical_flow, meaningful_mask, frame_id)
return optical_flow
@property
def num_fg_objects(self):
return len(self.fg_pcs)
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