Papers
arxiv:2411.16319

CutS3D: Cutting Semantics in 3D for 2D Unsupervised Instance Segmentation

Published on Nov 25, 2024
Authors:
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Abstract

A novel method for unsupervised instance segmentation uses 3D point cloud representation to segment objects and derive a Spatial Importance function and Spatial Confidence components to improve accuracy.

AI-generated summary

Traditionally, algorithms that learn to segment object instances in 2D images have heavily relied on large amounts of human-annotated data. Only recently, novel approaches have emerged tackling this problem in an unsupervised fashion. Generally, these approaches first generate pseudo-masks and then train a class-agnostic detector. While such methods deliver the current state of the art, they often fail to correctly separate instances overlapping in 2D image space since only semantics are considered. To tackle this issue, we instead propose to cut the semantic masks in 3D to obtain the final 2D instances by utilizing a point cloud representation of the scene. Furthermore, we derive a Spatial Importance function, which we use to resharpen the semantics along the 3D borders of instances. Nevertheless, these pseudo-masks are still subject to mask ambiguity. To address this issue, we further propose to augment the training of a class-agnostic detector with three Spatial Confidence components aiming to isolate a clean learning signal. With these contributions, our approach outperforms competing methods across multiple standard benchmarks for unsupervised instance segmentation and object detection.

Community

Dear Authors,
I really enjoyed reading your CutS3D paper—congratulations on your ICCV 2025 acceptance. I was wondering if you have any plans to open-source the full codebase. Having access to the implementation would be very helpful for running inference and understanding the method in more depth for related research. Again, Thank you for your excellent work.

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