Comments (3)
Dear @hay-001,
At the train phase, the test set accuracy is computed with the softly projected points, while at the evaluation phase, the sampled points are used. This change in the points can cause a difference in the accuracy result.
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So why not use soft projection points in the evaluation stage?
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Dear @unknownnnnnnn,
Our problem statement is point cloud sampling. This is why we evaluate the performance with the sampled points.
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