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Main Authors: Hou, Kaiyuan, Zhao, Minghui, Xu, Lilin, Fan, Yuang, Jiang, Xiaofan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.03748
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author Hou, Kaiyuan
Zhao, Minghui
Xu, Lilin
Fan, Yuang
Jiang, Xiaofan
author_facet Hou, Kaiyuan
Zhao, Minghui
Xu, Lilin
Fan, Yuang
Jiang, Xiaofan
contents Top-down images play an important role in safety-critical settings such as autonomous navigation and aerial surveillance, where they provide holistic spatial information that front-view images cannot capture. Despite this, Vision Language Models (VLMs) are mostly trained and evaluated on front-view benchmarks, leaving their performance in the top-down setting poorly understood. Existing evaluations also overlook a unique property of top-down images: their physical meaning is preserved under rotation. In addition, conventional accuracy metrics can be misleading, since they are often inflated by hallucinations or "lucky guesses", which obscures a model's true reliability and its grounding in visual evidence. To address these issues, we introduce TDBench, a benchmark for top-down image understanding that includes 2000 curated questions for each rotation. We further propose RotationalEval (RE), which measures whether models provide consistent answers across four rotated views of the same scene, and we develop a reliability framework that separates genuine knowledge from chance. Finally, we conduct four case studies targeting underexplored real-world challenges. By combining rigorous evaluation with reliability metrics, TDBench not only benchmarks VLMs in top-down perception but also provides a new perspective on trustworthiness, guiding the development of more robust and grounded AI systems. Project homepage: https://github.com/Columbia-ICSL/TDBench
format Preprint
id arxiv_https___arxiv_org_abs_2504_03748
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TDBench: A Benchmark for Top-Down Image Understanding with Reliability Analysis of Vision-Language Models
Hou, Kaiyuan
Zhao, Minghui
Xu, Lilin
Fan, Yuang
Jiang, Xiaofan
Machine Learning
Artificial Intelligence
Computation and Language
Top-down images play an important role in safety-critical settings such as autonomous navigation and aerial surveillance, where they provide holistic spatial information that front-view images cannot capture. Despite this, Vision Language Models (VLMs) are mostly trained and evaluated on front-view benchmarks, leaving their performance in the top-down setting poorly understood. Existing evaluations also overlook a unique property of top-down images: their physical meaning is preserved under rotation. In addition, conventional accuracy metrics can be misleading, since they are often inflated by hallucinations or "lucky guesses", which obscures a model's true reliability and its grounding in visual evidence. To address these issues, we introduce TDBench, a benchmark for top-down image understanding that includes 2000 curated questions for each rotation. We further propose RotationalEval (RE), which measures whether models provide consistent answers across four rotated views of the same scene, and we develop a reliability framework that separates genuine knowledge from chance. Finally, we conduct four case studies targeting underexplored real-world challenges. By combining rigorous evaluation with reliability metrics, TDBench not only benchmarks VLMs in top-down perception but also provides a new perspective on trustworthiness, guiding the development of more robust and grounded AI systems. Project homepage: https://github.com/Columbia-ICSL/TDBench
title TDBench: A Benchmark for Top-Down Image Understanding with Reliability Analysis of Vision-Language Models
topic Machine Learning
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2504.03748