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Papers/IAM: Enhancing RGB-D Instance Segmentation with New Benchm...

IAM: Enhancing RGB-D Instance Segmentation with New Benchmarks

Aecheon Jung, Soyun Choi, Junhong Min, Sungeun Hong

2025-01-03RGB-D Instance SegmentationData IntegrationScene UnderstandingSegmentationSemantic SegmentationInstance SegmentationImage Segmentation
PaperPDFCode(official)Code(official)Code(official)

Abstract

Image segmentation is a vital task for providing human assistance and enhancing autonomy in our daily lives. In particular, RGB-D segmentation-leveraging both visual and depth cues-has attracted increasing attention as it promises richer scene understanding than RGB-only methods. However, most existing efforts have primarily focused on semantic segmentation and thus leave a critical gap. There is a relative scarcity of instance-level RGB-D segmentation datasets, which restricts current methods to broad category distinctions rather than fully capturing the fine-grained details required for recognizing individual objects. To bridge this gap, we introduce three RGB-D instance segmentation benchmarks, distinguished at the instance level. These datasets are versatile, supporting a wide range of applications from indoor navigation to robotic manipulation. In addition, we present an extensive evaluation of various baseline models on these benchmarks. This comprehensive analysis identifies both their strengths and shortcomings, guiding future work toward more robust, generalizable solutions. Finally, we propose a simple yet effective method for RGB-D data integration. Extensive evaluations affirm the effectiveness of our approach, offering a robust framework for advancing toward more nuanced scene understanding.

Results

TaskDatasetMetricValueModel
Instance SegmentationBox-ISmask AP83.7IAM + SOLQ
Instance SegmentationSUN-RGBD-ISmask AP25.7IAM + SOLQ
Instance SegmentationSUN-RGBD-ISmask AP22.9IAM + DETR
Instance SegmentationNYUDv2-ISmask AP35.8IAM + SOLQ
Instance SegmentationNYUDv2-ISmask AP32.3IAM + DETR
Instance SegmentationSUN-RGBD-ISmask AP25.7IAM + SOLQ
Instance SegmentationSUN-RGBD-ISmask AP22.9IAM + DETR
Instance SegmentationBox-ISmask AP83.7IAM + SOLQ
Instance SegmentationNYUDv2-ISmask AP35.8IAM + SOLQ
Instance SegmentationNYUDv2-ISmask AP32.3IAM + DETR

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