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| import torch | |
| from torch.autograd import Function | |
| from pointops._C import knn_query_cuda, random_ball_query_cuda, ball_query_cuda | |
| class KNNQuery(Function): | |
| def forward(ctx, nsample, xyz, offset, new_xyz=None, new_offset=None): | |
| """ | |
| input: coords: (n, 3), new_xyz: (m, 3), offset: (b), new_offset: (b) | |
| output: idx: (m, nsample) -1 is placeholder, dist2: (m, nsample) | |
| """ | |
| if new_xyz is None or new_offset is None: | |
| new_xyz = xyz | |
| new_offset = offset | |
| assert xyz.is_contiguous() and new_xyz.is_contiguous() | |
| m = new_xyz.shape[0] | |
| idx = torch.cuda.IntTensor(m, nsample).zero_() | |
| dist2 = torch.cuda.FloatTensor(m, nsample).zero_() | |
| knn_query_cuda( | |
| m, nsample, xyz, new_xyz, offset.int(), new_offset.int(), idx, dist2 | |
| ) | |
| return idx, torch.sqrt(dist2) | |
| class RandomBallQuery(Function): | |
| """Random Ball Query. | |
| Find nearby points in spherical space. | |
| """ | |
| def forward( | |
| ctx, nsample, max_radius, min_radius, xyz, offset, new_xyz=None, new_offset=None | |
| ): | |
| """ | |
| input: coords: (n, 3), new_xyz: (m, 3), offset: (b), new_offset: (b) | |
| output: idx: (m, nsample), dist2: (m, nsample) | |
| """ | |
| if new_xyz is None or new_offset is None: | |
| new_xyz = xyz | |
| new_offset = offset | |
| assert xyz.is_contiguous() and new_xyz.is_contiguous() | |
| assert min_radius < max_radius | |
| m = new_xyz.shape[0] | |
| order = [] | |
| for k in range(offset.shape[0]): | |
| s_k, e_k = (0, offset[0]) if k == 0 else (offset[k - 1], offset[k]) | |
| order.append( | |
| torch.randperm(e_k - s_k, dtype=torch.int32, device=offset.device) + s_k | |
| ) | |
| order = torch.cat(order, dim=0) | |
| idx = torch.cuda.IntTensor(m, nsample).zero_() | |
| dist2 = torch.cuda.FloatTensor(m, nsample).zero_() | |
| random_ball_query_cuda( | |
| m, | |
| nsample, | |
| min_radius, | |
| max_radius, | |
| order, | |
| xyz, | |
| new_xyz, | |
| offset.int(), | |
| new_offset.int(), | |
| idx, | |
| dist2, | |
| ) | |
| return idx, torch.sqrt(dist2) | |
| class BallQuery(Function): | |
| """Ball Query. | |
| Find nearby points in spherical space. | |
| """ | |
| def forward( | |
| ctx, nsample, max_radius, min_radius, xyz, offset, new_xyz=None, new_offset=None | |
| ): | |
| """ | |
| input: coords: (n, 3), new_xyz: (m, 3), offset: (b), new_offset: (b) | |
| output: idx: (m, nsample), dist2: (m, nsample) | |
| """ | |
| if new_xyz is None or new_offset is None: | |
| new_xyz = xyz | |
| new_offset = offset | |
| assert xyz.is_contiguous() and new_xyz.is_contiguous() | |
| assert min_radius < max_radius | |
| m = new_xyz.shape[0] | |
| idx = torch.cuda.IntTensor(m, nsample).zero_() | |
| dist2 = torch.cuda.FloatTensor(m, nsample).zero_() | |
| ball_query_cuda( | |
| m, | |
| nsample, | |
| min_radius, | |
| max_radius, | |
| xyz, | |
| new_xyz, | |
| offset.int(), | |
| new_offset.int(), | |
| idx, | |
| dist2, | |
| ) | |
| return idx, torch.sqrt(dist2) | |
| knn_query = KNNQuery.apply | |
| ball_query = BallQuery.apply | |
| random_ball_query = RandomBallQuery.apply | |