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rasterize_gaussians.cpp
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rasterize_gaussians.cpp
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#include "rasterize_gaussians.hpp"
#include "gsplat.hpp"
#if defined(USE_HIP) || defined(USE_CUDA) || defined(USE_MPS)
std::tuple<torch::Tensor,
torch::Tensor,
torch::Tensor,
torch::Tensor,
torch::Tensor> binAndSortGaussians(int numPoints, int numIntersects,
torch::Tensor xys,
torch::Tensor depths,
torch::Tensor radii,
torch::Tensor cumTilesHit,
TileBounds tileBounds){
auto t = map_gaussian_to_intersects_tensor(numPoints, numIntersects,
xys, depths, radii, cumTilesHit, tileBounds);
// unique IDs for each gaussian in the form (tile | depth id)
torch::Tensor isectIds = std::get<0>(t);
// Tensor that maps isect_ids back to cumHitTiles
torch::Tensor gaussianIds = std::get<1>(t);
auto sorted = torch::sort(isectIds);
// sorted unique IDs for each gaussian in the form (tile | depth id)
torch::Tensor isectIdsSorted = std::get<0>(sorted);
torch::Tensor sortedIndices = std::get<1>(sorted);
// sorted Tensor that maps isect_ids back to cumHitTiles
torch::Tensor gaussianIdsSorted = torch::gather(gaussianIds, 0, sortedIndices);
// range of gaussians hit per tile
torch::Tensor tileBins = get_tile_bin_edges_tensor(numIntersects, isectIdsSorted);
return std::make_tuple(isectIds, gaussianIds, isectIdsSorted, gaussianIdsSorted, tileBins);
}
torch::Tensor RasterizeGaussians::forward(AutogradContext *ctx,
torch::Tensor xys,
torch::Tensor depths,
torch::Tensor radii,
torch::Tensor conics,
torch::Tensor numTilesHit,
torch::Tensor colors,
torch::Tensor opacity,
int imgHeight,
int imgWidth,
torch::Tensor background
){
int numPoints = xys.size(0);
TileBounds tileBounds = std::make_tuple(
(imgWidth + BLOCK_X - 1) / BLOCK_X,
(imgHeight + BLOCK_Y - 1) / BLOCK_Y,
1
);
std::tuple<int, int, int> block = std::make_tuple(BLOCK_X, BLOCK_Y, 1);
std::tuple<int, int, int> imgSize = std::make_tuple(imgWidth, imgHeight, 1);
torch::Tensor cumTilesHit = torch::cumsum(numTilesHit, 0, torch::kInt32);
int numIntersects = cumTilesHit[cumTilesHit.size(0) - 1].item<int>();
auto b = binAndSortGaussians(numPoints, numIntersects, xys, depths, radii, cumTilesHit, tileBounds);
torch::Tensor gaussianIdsSorted = std::get<3>(b);
torch::Tensor tileBins = std::get<4>(b);
auto t = rasterize_forward_tensor(tileBounds, block, imgSize,
gaussianIdsSorted,
tileBins,
xys,
conics,
colors,
opacity,
background);
// Final image
torch::Tensor outImg = std::get<0>(t);
torch::Tensor finalTs = std::get<1>(t);
// Map of tile bin IDs
torch::Tensor finalIdx = std::get<2>(t);
ctx->saved_data["imgWidth"] = imgWidth;
ctx->saved_data["imgHeight"] = imgHeight;
ctx->save_for_backward({ gaussianIdsSorted, tileBins, xys, conics, colors, opacity, background, finalTs, finalIdx });
return outImg;
}
tensor_list RasterizeGaussians::backward(AutogradContext *ctx, tensor_list grad_outputs) {
torch::Tensor v_outImg = grad_outputs[0];
int imgHeight = ctx->saved_data["imgHeight"].toInt();
int imgWidth = ctx->saved_data["imgWidth"].toInt();
variable_list saved = ctx->get_saved_variables();
torch::Tensor gaussianIdsSorted = saved[0];
torch::Tensor tileBins = saved[1];
torch::Tensor xys = saved[2];
torch::Tensor conics = saved[3];
torch::Tensor colors = saved[4];
torch::Tensor opacity = saved[5];
torch::Tensor background = saved[6];
torch::Tensor finalTs = saved[7];
torch::Tensor finalIdx = saved[8];
torch::Tensor v_outAlpha = torch::zeros_like(v_outImg.index({"...", 0}));
auto t = rasterize_backward_tensor(imgHeight, imgWidth,
gaussianIdsSorted,
tileBins,
xys,
conics,
colors,
opacity,
background,
finalTs,
finalIdx,
v_outImg,
v_outAlpha);
torch::Tensor v_xy = std::get<0>(t);
torch::Tensor v_conic = std::get<1>(t);
torch::Tensor v_colors = std::get<2>(t);
torch::Tensor v_opacity = std::get<3>(t);
torch::Tensor none;
return { v_xy,
none, // depths
none, // radii
v_conic,
none, // numTilesHit
v_colors,
v_opacity,
none, // imgHeight
none, // imgWidth
none // background
};
}
#endif
torch::Tensor RasterizeGaussiansCPU::forward(AutogradContext *ctx,
torch::Tensor xys,
torch::Tensor radii,
torch::Tensor conics,
torch::Tensor colors,
torch::Tensor opacity,
torch::Tensor cov2d,
torch::Tensor camDepths,
int imgHeight,
int imgWidth,
torch::Tensor background
){
int numPoints = xys.size(0);
auto t = rasterize_forward_tensor_cpu(imgWidth, imgHeight,
xys,
conics,
colors,
opacity,
background,
cov2d,
camDepths
);
// Final image
torch::Tensor outImg = std::get<0>(t);
torch::Tensor finalTs = std::get<1>(t);
std::vector<int32_t> *px2gid = std::get<2>(t);
ctx->saved_data["px2gid"] = reinterpret_cast<int64_t>(px2gid);
ctx->saved_data["imgWidth"] = imgWidth;
ctx->saved_data["imgHeight"] = imgHeight;
ctx->save_for_backward({ xys, conics, colors, opacity, background, cov2d, camDepths, finalTs });
return outImg;
}
tensor_list RasterizeGaussiansCPU::backward(AutogradContext *ctx, tensor_list grad_outputs) {
torch::Tensor v_outImg = grad_outputs[0];
int imgHeight = ctx->saved_data["imgHeight"].toInt();
int imgWidth = ctx->saved_data["imgWidth"].toInt();
const std::vector<int32_t> *px2gid = reinterpret_cast<const std::vector<int32_t> *>(ctx->saved_data["px2gid"].toInt());
variable_list saved = ctx->get_saved_variables();
torch::Tensor xys = saved[0];
torch::Tensor conics = saved[1];
torch::Tensor colors = saved[2];
torch::Tensor opacity = saved[3];
torch::Tensor background = saved[4];
torch::Tensor cov2d = saved[5];
torch::Tensor camDepths = saved[6];
torch::Tensor finalTs = saved[7];
torch::Tensor v_outAlpha = torch::zeros_like(v_outImg.index({"...", 0}));
auto t = rasterize_backward_tensor_cpu(imgHeight, imgWidth,
xys,
conics,
colors,
opacity,
background,
cov2d,
camDepths,
finalTs,
px2gid,
v_outImg,
v_outAlpha);
delete[] px2gid;
torch::Tensor v_xy = std::get<0>(t);
torch::Tensor v_conic = std::get<1>(t);
torch::Tensor v_colors = std::get<2>(t);
torch::Tensor v_opacity = std::get<3>(t);
torch::Tensor none;
return { v_xy,
none, // radii
v_conic,
v_colors,
v_opacity,
none, // cov2d
none, // camDepths
none, // imgHeight
none, // imgWidth
none // background
};
}