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I have run the demo app.py on the rhino point cloud, and I am seeing results that are essentially equivalent to the rhino demo video shown on the github.io page (which appears to be taken with a more refined version of the app.py). However, the demo videos seem to focus on segmentations that have a combination of interior and exterior boundaries. So, for example in the rhino's legs or tail or horns, most of the intended segmentation boundaries are exterior air boundaries, and a smaller interior boundary is only present at the chest, or head or rump. In my application, the point cloud is not hollow, and further I have predominantly interior boundaries. I created a simple high-contrast 3d object out of squares and rectangles with mostly interior boundaries to test this, and I am seeing that the segmentations are not so good. Is there any indication of how well point SAM could, or should, work on dense point clouds with interior boundaries?
The text was updated successfully, but these errors were encountered:
I have run the demo app.py on the rhino point cloud, and I am seeing results that are essentially equivalent to the rhino demo video shown on the github.io page (which appears to be taken with a more refined version of the app.py). However, the demo videos seem to focus on segmentations that have a combination of interior and exterior boundaries. So, for example in the rhino's legs or tail or horns, most of the intended segmentation boundaries are exterior air boundaries, and a smaller interior boundary is only present at the chest, or head or rump. In my application, the point cloud is not hollow, and further I have predominantly interior boundaries. I created a simple high-contrast 3d object out of squares and rectangles with mostly interior boundaries to test this, and I am seeing that the segmentations are not so good. Is there any indication of how well point SAM could, or should, work on dense point clouds with interior boundaries?
The text was updated successfully, but these errors were encountered: