Visible-Thermal Tiny Object Detection: A Benchmark Dataset and Baselines.

Xinyi Ying, Chao Xiao, Wei An, Ruojing Li, Xu He, Boyang Li, Xu Cao, Zhaoxu Li, Yingqian Wang, Mingyuan Hu, Qingyu Xu, Zaiping Lin, Miao Li, Shilin Zhou, Weidong Sheng, Li Liu
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Abstract

Visible-thermal small object detection (RGBT SOD) is a significant yet challenging task with a wide range of applications, including video surveillance, traffic monitoring, search and rescue. However, existing studies mainly focus on either visible or thermal modality, while RGBT SOD is rarely explored. Although some RGBT datasets have been developed, the insufficient quantity, limited diversity, unitary application, misaligned images and large target size cannot provide an impartial benchmark to evaluate RGBT SOD algorithms. In this paper, we build the first large-scale benchmark with high diversity for RGBT SOD (namely RGBT-Tiny), including 115 paired sequences, 93 K frames and 1.2 M manual annotations. RGBT-Tiny contains abundant objects (7 categories) and high-diversity scenes (8 types that cover different illumination and density variations). Note that, over 81% of objects are smaller than 16×16, and we provide paired bounding box annotations with tracking ID to offer an extremely challenging benchmark with wide-range applications, such as RGBT image fusion, object detection and tracking. In addition, we propose a scale adaptive fitness (SAFit) measure that exhibits high robustness on both small and large objects. The proposed SAFit can provide reasonable performance evaluation and promote detection performance. Based on the proposed RGBT-Tiny dataset, extensive evaluations have been conducted with IoU and SAFit metrics, including 32 recent state-of-the-art algorithms that cover four different types (i.e., visible generic detection, visible SOD, thermal SOD and RGBT object detection). Project is available at https://github.com/XinyiYing/RGBT-Tiny.

可见热微小目标检测:基准数据集和基线。
可见热小目标检测(RGBT SOD)是一项重要但具有挑战性的任务,具有广泛的应用,包括视频监控,交通监控,搜索和救援。然而,现有的研究主要集中在可见光或热态,而对rgbsod的研究很少。虽然已经开发了一些RGBT数据集,但由于数量不足、多样性有限、应用单一、图像不对齐、目标尺寸大等问题,无法为评价RGBT SOD算法提供一个公正的基准。在本文中,我们构建了第一个具有高多样性的rgbtsod(即rgbttiny)的大规模基准测试,包括115对序列,93 K帧和1.2 M手工注释。RGBT-Tiny包含丰富的对象(7类)和高多样性的场景(8类,涵盖不同的光照和密度变化)。请注意,超过81%的对象小于16×16,我们提供了配对的边界框注释和跟踪ID,为广泛的应用提供了极具挑战性的基准测试,例如RGBT图像融合,对象检测和跟踪。此外,我们还提出了一种尺度自适应适应度(SAFit)测量方法,该方法在大小目标上都具有很高的鲁棒性。所提出的SAFit可以提供合理的性能评价,提高检测性能。基于提出的RGBT- tiny数据集,对IoU和SAFit指标进行了广泛的评估,包括32种最新的最先进算法,涵盖四种不同类型(即可见通用检测、可见超氧化物歧化酶、热超氧化物歧化酶和RGBT目标检测)。项目可在https://github.com/XinyiYing/RGBT-Tiny上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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