CVROApr 17

SENSE: Stereo OpEN Vocabulary SEmantic Segmentation

arXiv:2604.1594640.9h-index: 39
AI Analysis

For autonomous robots and intelligent transportation systems, SENSE enhances open-vocabulary segmentation by incorporating geometric cues from stereo images, improving performance under occlusions and near boundaries.

SENSE introduces the first stereo open-vocabulary semantic segmentation method, leveraging stereo vision and vision-language models to improve spatial reasoning and segmentation accuracy. It achieves +2.9% Average Precision over baseline on PhraseStereo, +3.5% mIoU on Cityscapes, and +18% on KITTI.

Open-vocabulary semantic segmentation enables models to segment objects or image regions beyond fixed class sets, offering flexibility in dynamic environments. However, existing methods often rely on single-view images and struggle with spatial precision, especially under occlusions and near object boundaries. We propose SENSE, the first work on Stereo OpEN Vocabulary SEmantic Segmentation, which leverages stereo vision and vision-language models to enhance open-vocabulary semantic segmentation. By incorporating stereo image pairs, we introduce geometric cues that improve spatial reasoning and segmentation accuracy. Trained on the PhraseStereo dataset, our approach achieves strong performance in phrase-grounded tasks and demonstrates generalization in zero-shot settings. On PhraseStereo, we show a +2.9% improvement in Average Precision over the baseline method and +0.76% over the best competing method. SENSE also provides a relative improvement of +3.5% mIoU on Cityscapes and +18% on KITTI compared to the baseline work. By jointly reasoning over semantics and geometry, SENSE supports accurate scene understanding from natural language, essential for autonomous robots and Intelligent Transportation Systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes