CVJun 25, 2024

Depth-Guided Semi-Supervised Instance Segmentation

arXiv:2406.17413v14 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of unstable pseudo-labels in semi-supervised instance segmentation for computer vision applications, representing an incremental improvement.

The paper tackles the problem of semi-supervised instance segmentation by leveraging depth maps to reduce noise from RGB data, achieving mAP scores of 22.29%, 31.47%, and 35.14% for 1%, 5%, and 10% labeled data on COCO.

Semi-Supervised Instance Segmentation (SSIS) aims to leverage an amount of unlabeled data during training. Previous frameworks primarily utilized the RGB information of unlabeled images to generate pseudo-labels. However, such a mechanism often introduces unstable noise, as a single instance can display multiple RGB values. To overcome this limitation, we introduce a Depth-Guided (DG) SSIS framework. This framework uses depth maps extracted from input images, which represent individual instances with closely associated distance values, offering precise contours for distinct instances. Unlike RGB data, depth maps provide a unique perspective, making their integration into the SSIS process complex. To this end, we propose Depth Feature Fusion, which integrates features extracted from depth estimation. This integration allows the model to understand depth information better and ensure its effective utilization. Additionally, to manage the variability of depth images during training, we introduce the Depth Controller. This component enables adaptive adjustments of the depth map, enhancing convergence speed and dynamically balancing the loss weights between RGB and depth maps. Extensive experiments conducted on the COCO and Cityscapes datasets validate the efficacy of our proposed method. Our approach establishes a new benchmark for SSIS, outperforming previous methods. Specifically, our DG achieves 22.29%, 31.47%, and 35.14% mAP for 1%, 5%, and 10% labeled data on the COCO dataset, respectively.

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