# SPDX-FileCopyrightText: Copyright (c) 2021-2022 NVIDIA CORPORATION & AFFILIATES. All rights reserved. # SPDX-License-Identifier: LicenseRef-NvidiaProprietary # # NVIDIA CORPORATION, its affiliates and licensors retain all intellectual # property and proprietary rights in and to this material, related # documentation and any modifications thereto. Any use, reproduction, # disclosure or distribution of this material and related documentation # without an express license agreement from NVIDIA CORPORATION or # its affiliates is strictly prohibited. # # Modified by Zexin He # The modifications are subject to the same license as the original. """ The renderer is a module that takes in rays, decides where to sample along each ray, and computes pixel colors using the volume rendering equation. """ import torch import torch.nn as nn import torch.nn.functional as F from .ray_marcher import MipRayMarcher2 from . import math_utils # from ldm.modules.rendering_neus.third_party.ops import grid_sample def generate_planes(): """ Defines planes by the three vectors that form the "axes" of the plane. Should work with arbitrary number of planes and planes of arbitrary orientation. Bugfix reference: https://github.com/NVlabs/eg3d/issues/67 """ return torch.tensor([[[1, 0, 0], [0, 1, 0], [0, 0, 1]], [[1, 0, 0], [0, 0, 1], [0, 1, 0]], [[0, 0, 1], [0, 1, 0], [1, 0, 0]]], dtype=torch.float32) def project_onto_planes(planes, coordinates): """ Does a projection of a 3D point onto a batch of 2D planes, returning 2D plane coordinates. Takes plane axes of shape n_planes, 3, 3 # Takes coordinates of shape N, M, 3 # returns projections of shape N*n_planes, M, 2 """ N, M, C = coordinates.shape n_planes, _, _ = planes.shape coordinates = coordinates.unsqueeze(1).expand(-1, n_planes, -1, -1).reshape(N*n_planes, M, 3) inv_planes = torch.linalg.inv(planes).unsqueeze(0).expand(N, -1, -1, -1).reshape(N*n_planes, 3, 3) projections = torch.bmm(coordinates, inv_planes) return projections[..., :2] def sample_from_planes(plane_axes, plane_features, coordinates, mode='bilinear', padding_mode='zeros', box_warp=None): assert padding_mode == 'zeros' N, n_planes, C, H, W = plane_features.shape _, M, _ = coordinates.shape plane_features = plane_features.view(N*n_planes, C, H, W) coordinates = (2/box_warp) * coordinates # add specific box bounds # print(coordinates.max(), coordinates.min()) # import pdb; pdb.set_trace() projected_coordinates = project_onto_planes(plane_axes, coordinates).unsqueeze(1) # output_features = grid_sample.grid_sample_2d(plane_features, projected_coordinates.float().to(plane_features.device)).permute(0, 3, 2, 1).reshape(N, n_planes, M, C) output_features = torch.nn.functional.grid_sample(plane_features.float(), projected_coordinates.float(), mode=mode, padding_mode=padding_mode, align_corners=False).permute(0, 3, 2, 1).reshape(N, n_planes, M, C) return output_features def sample_from_3dgrid(grid, coordinates): """ Expects coordinates in shape (batch_size, num_points_per_batch, 3) Expects grid in shape (1, channels, H, W, D) (Also works if grid has batch size) Returns sampled features of shape (batch_size, num_points_per_batch, feature_channels) """ batch_size, n_coords, n_dims = coordinates.shape sampled_features = torch.nn.functional.grid_sample(grid.expand(batch_size, -1, -1, -1, -1), coordinates.reshape(batch_size, 1, 1, -1, n_dims), mode='bilinear', padding_mode='zeros', align_corners=False) N, C, H, W, D = sampled_features.shape sampled_features = sampled_features.permute(0, 4, 3, 2, 1).reshape(N, H*W*D, C) return sampled_features class ImportanceRenderer(torch.nn.Module): """ Modified original version to filter out-of-box samples as TensoRF does. Reference: TensoRF: https://github.com/apchenstu/TensoRF/blob/main/models/tensorBase.py#L277 """ def __init__(self): super().__init__() self.activation_factory = self._build_activation_factory() self.ray_marcher = MipRayMarcher2(self.activation_factory) self.plane_axes = generate_planes() def _build_activation_factory(self): def activation_factory(options: dict): if options['clamp_mode'] == 'softplus': return lambda x: F.softplus(x - 1) # activation bias of -1 makes things initialize better else: assert False, "Renderer only supports `clamp_mode`=`softplus`!" return activation_factory def _forward_pass(self, depths: torch.Tensor, ray_directions: torch.Tensor, ray_origins: torch.Tensor, planes: torch.Tensor, decoder: nn.Module, rendering_options: dict): """ Additional filtering is applied to filter out-of-box samples. Modifications made by Zexin He. """ # context related variables batch_size, num_rays, samples_per_ray, _ = depths.shape device = depths.device # define sample points with depths sample_directions = ray_directions.unsqueeze(-2).expand(-1, -1, samples_per_ray, -1).reshape(batch_size, -1, 3) sample_coordinates = (ray_origins.unsqueeze(-2) + depths * ray_directions.unsqueeze(-2)).reshape(batch_size, -1, 3) # print(f'min bbox: {sample_coordinates.min()}, max bbox: {sample_coordinates.max()}') # import pdb; pdb.set_trace() # filter out-of-box samples mask_inbox = \ (rendering_options['sampler_bbox_min'] <= sample_coordinates) & \ (sample_coordinates <= rendering_options['sampler_bbox_max']) mask_inbox = mask_inbox.all(-1) # forward model according to all samples _out = self.run_model(planes, decoder, sample_coordinates, sample_directions, rendering_options) # set out-of-box samples to zeros(rgb) & -inf(sigma) SAFE_GUARD = 3 DATA_TYPE = _out['sdf'].dtype colors_pass = torch.zeros(batch_size, num_rays * samples_per_ray, 3, device=device, dtype=DATA_TYPE) normals_pass = torch.zeros(batch_size, num_rays * samples_per_ray, 3, device=device, dtype=DATA_TYPE) sdfs_pass = torch.nan_to_num(torch.full((batch_size, num_rays * samples_per_ray, 1), -float('inf'), device=device, dtype=DATA_TYPE)) / SAFE_GUARD # print(DATA_TYPE) # import pdb; pdb.set_trace() # colors_pass[mask_inbox], sdfs_pass[mask_inbox] = _out['rgb'][mask_inbox], _out['sdf'][mask_inbox] colors_pass[mask_inbox], sdfs_pass = _out['rgb'][mask_inbox], _out['sdf'] normals_pass = _out['normal'] # reshape back colors_pass = colors_pass.reshape(batch_size, num_rays, samples_per_ray, colors_pass.shape[-1]) sdfs_pass = sdfs_pass.reshape(batch_size, num_rays, samples_per_ray, sdfs_pass.shape[-1]) normals_pass = normals_pass.reshape(batch_size, num_rays, samples_per_ray, normals_pass.shape[-1]) return colors_pass, sdfs_pass, normals_pass, _out['sdf_grad'] def forward(self, planes, decoder, ray_origins, ray_directions, rendering_options, bgcolor=None): # self.plane_axes = self.plane_axes.to(ray_origins.device) if rendering_options['ray_start'] == 'auto' == rendering_options['ray_end']: ray_start, ray_end = math_utils.get_ray_limits_box(ray_origins, ray_directions, box_side_length=rendering_options['box_warp']) # [1, N_ray, 1] is_ray_valid = ray_end > ray_start if torch.any(is_ray_valid).item(): ray_start[~is_ray_valid] = ray_start[is_ray_valid].min() ray_end[~is_ray_valid] = ray_start[is_ray_valid].max() depths_coarse = self.sample_stratified(ray_origins, ray_start, ray_end, rendering_options['depth_resolution'], rendering_options['disparity_space_sampling']) # [1, N_ray, N_sample, 1]】 else: # Create stratified depth samples depths_coarse = self.sample_stratified(ray_origins, rendering_options['ray_start'], rendering_options['ray_end'], rendering_options['depth_resolution'], rendering_options['disparity_space_sampling']) # Coarse Pass colors_coarse, sdfs_coarse, normals_coarse, sdf_grad = self._forward_pass( depths=depths_coarse, ray_directions=ray_directions, ray_origins=ray_origins, planes=planes, decoder=decoder, rendering_options=rendering_options) # Fine Pass N_importance = rendering_options['depth_resolution_importance'] # TODO if N_importance > 0: _, _, weights = self.ray_marcher(colors_coarse, sdfs_coarse, depths_coarse, sdf_grad.reshape(*normals_coarse.shape), ray_directions, rendering_options, bgcolor) depths_fine = self.sample_importance(depths_coarse, weights, N_importance) colors_fine, densities_fine = self._forward_pass( depths=depths_fine, ray_directions=ray_directions, ray_origins=ray_origins, planes=planes, decoder=decoder, rendering_options=rendering_options) all_depths, all_colors, all_densities = self.unify_samples(depths_coarse, colors_coarse, densities_coarse, depths_fine, colors_fine, densities_fine) #### # dists = depths_coarse[:, :, 1:, :] - depths_coarse[:, :, :-1, :] # inter = (ray_end - ray_start) / ( rendering_options['depth_resolution'] + rendering_options['depth_resolution_importance'] - 1) # [1, N_ray, 1] # dists = torch.cat([dists, inter.unsqueeze(2), 2]) #### # Aggregate rgb_final, depth_final, weights = self.ray_marcher(all_colors, all_densities, all_depths, rendering_options, bgcolor) else: # # import pdb; pdb.set_trace() # dists = depths_coarse[:, :, 1:, :] - depths_coarse[:, :, :-1, :] # inter = (ray_end - ray_start) / ( rendering_options['depth_resolution'] - 1) # [1, N_ray, 1] # dists = torch.cat([dists, inter.unsqueeze(2)], 2) # # import ipdb; ipdb.set_trace() # rgb_final, depth_final, weights = self.ray_marcher(colors_coarse, sdfs_coarse, depths_coarse, normals_coarse, dists, ray_directions, rendering_options, bgcolor) rgb_final, depth_final, weights, normal_final = self.ray_marcher(colors_coarse, sdfs_coarse, depths_coarse, sdf_grad.reshape(*normals_coarse.shape), ray_directions, rendering_options, bgcolor, normals_coarse) # import ipdb; ipdb.set_trace() return rgb_final, depth_final, weights.sum(2), sdf_grad, normal_final def run_model(self, planes, decoder, sample_coordinates, sample_directions, options): plane_axes = self.plane_axes.to(planes.device) out = decoder(sample_directions, sample_coordinates, plane_axes, planes, options) # if options.get('density_noise', 0) > 0: # out['sigma'] += torch.randn_like(out['sigma']) * options['density_noise'] return out def run_model_activated(self, planes, decoder, sample_coordinates, sample_directions, options): out = self.run_model(planes, decoder, sample_coordinates, sample_directions, options) out['sigma'] = self.activation_factory(options)(out['sigma']) return out def sort_samples(self, all_depths, all_colors, all_densities): _, indices = torch.sort(all_depths, dim=-2) all_depths = torch.gather(all_depths, -2, indices) all_colors = torch.gather(all_colors, -2, indices.expand(-1, -1, -1, all_colors.shape[-1])) all_densities = torch.gather(all_densities, -2, indices.expand(-1, -1, -1, 1)) return all_depths, all_colors, all_densities def unify_samples(self, depths1, colors1, densities1, depths2, colors2, densities2): all_depths = torch.cat([depths1, depths2], dim = -2) all_colors = torch.cat([colors1, colors2], dim = -2) all_densities = torch.cat([densities1, densities2], dim = -2) _, indices = torch.sort(all_depths, dim=-2) all_depths = torch.gather(all_depths, -2, indices) all_colors = torch.gather(all_colors, -2, indices.expand(-1, -1, -1, all_colors.shape[-1])) all_densities = torch.gather(all_densities, -2, indices.expand(-1, -1, -1, 1)) return all_depths, all_colors, all_densities def sample_stratified(self, ray_origins, ray_start, ray_end, depth_resolution, disparity_space_sampling=False): """ Return depths of approximately uniformly spaced samples along rays. """ N, M, _ = ray_origins.shape if disparity_space_sampling: depths_coarse = torch.linspace(0, 1, depth_resolution, device=ray_origins.device).reshape(1, 1, depth_resolution, 1).repeat(N, M, 1, 1) depth_delta = 1/(depth_resolution - 1) depths_coarse += torch.rand_like(depths_coarse) * depth_delta depths_coarse = 1./(1./ray_start * (1. - depths_coarse) + 1./ray_end * depths_coarse) else: if type(ray_start) == torch.Tensor: depths_coarse = math_utils.linspace(ray_start, ray_end, depth_resolution).permute(1,2,0,3) depth_delta = (ray_end - ray_start) / (depth_resolution - 1) depths_coarse += torch.rand_like(depths_coarse) * depth_delta[..., None] else: depths_coarse = torch.linspace(ray_start, ray_end, depth_resolution, device=ray_origins.device).reshape(1, 1, depth_resolution, 1).repeat(N, M, 1, 1) depth_delta = (ray_end - ray_start)/(depth_resolution - 1) depths_coarse += torch.rand_like(depths_coarse) * depth_delta return depths_coarse def sample_importance(self, z_vals, weights, N_importance): """ Return depths of importance sampled points along rays. See NeRF importance sampling for more. """ with torch.no_grad(): batch_size, num_rays, samples_per_ray, _ = z_vals.shape z_vals = z_vals.reshape(batch_size * num_rays, samples_per_ray) weights = weights.reshape(batch_size * num_rays, -1) # -1 to account for loss of 1 sample in MipRayMarcher # smooth weights weights = torch.nn.functional.max_pool1d(weights.unsqueeze(1).float(), 2, 1, padding=1) weights = torch.nn.functional.avg_pool1d(weights, 2, 1).squeeze() weights = weights + 0.01 z_vals_mid = 0.5 * (z_vals[: ,:-1] + z_vals[: ,1:]) importance_z_vals = self.sample_pdf(z_vals_mid, weights[:, 1:-1], N_importance).detach().reshape(batch_size, num_rays, N_importance, 1) return importance_z_vals def sample_pdf(self, bins, weights, N_importance, det=False, eps=1e-5): """ Sample @N_importance samples from @bins with distribution defined by @weights. Inputs: bins: (N_rays, N_samples_+1) where N_samples_ is "the number of coarse samples per ray - 2" weights: (N_rays, N_samples_) N_importance: the number of samples to draw from the distribution det: deterministic or not eps: a small number to prevent division by zero Outputs: samples: the sampled samples """ N_rays, N_samples_ = weights.shape weights = weights + eps # prevent division by zero (don't do inplace op!) pdf = weights / torch.sum(weights, -1, keepdim=True) # (N_rays, N_samples_) cdf = torch.cumsum(pdf, -1) # (N_rays, N_samples), cumulative distribution function cdf = torch.cat([torch.zeros_like(cdf[: ,:1]), cdf], -1) # (N_rays, N_samples_+1) # padded to 0~1 inclusive if det: u = torch.linspace(0, 1, N_importance, device=bins.device) u = u.expand(N_rays, N_importance) else: u = torch.rand(N_rays, N_importance, device=bins.device) u = u.contiguous() inds = torch.searchsorted(cdf, u, right=True) below = torch.clamp_min(inds-1, 0) above = torch.clamp_max(inds, N_samples_) inds_sampled = torch.stack([below, above], -1).view(N_rays, 2*N_importance) cdf_g = torch.gather(cdf, 1, inds_sampled).view(N_rays, N_importance, 2) bins_g = torch.gather(bins, 1, inds_sampled).view(N_rays, N_importance, 2) denom = cdf_g[...,1]-cdf_g[...,0] denom[denom