1. Are Vision-Language Models Truly Understanding Multi-vision Sensor?
- Author
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Chung, Sangyun, Yu, Youngjoon, Chee, Youngchae, Kim, Se Yeon, Lee, Byung-Kwan, and Ro, Yong Man
- Subjects
Computer Science - Computer Vision and Pattern Recognition - Abstract
Large-scale Vision-Language Models (VLMs) have advanced by aligning vision inputs with text, significantly improving performance in computer vision tasks. Moreover, for VLMs to be effectively utilized in real-world applications, an understanding of diverse multi-vision sensor data, such as thermal, depth, and X-ray information, is essential. However, we find that current VLMs process multi-vision sensor images without deep understanding of sensor information, disregarding each sensor's unique physical properties. This limitation restricts their capacity to interpret and respond to complex questions requiring multi-vision sensor reasoning. To address this, we propose a novel Multi-vision Sensor Perception and Reasoning (MS-PR) benchmark, assessing VLMs on their capacity for sensor-specific reasoning. Moreover, we introduce Diverse Negative Attributes (DNA) optimization to enable VLMs to perform deep reasoning on multi-vision sensor tasks, helping to bridge the core information gap between images and sensor data. Extensive experimental results validate that the proposed DNA method can significantly improve the multi-vision sensor reasoning for VLMs., Comment: https://github.com/top-yun/MS-PR. arXiv admin note: text overlap with arXiv:2408.12114
- Published
- 2024