Benchmarks, such as COCO, play a crucial role in object detection. However, existing benchmarks are insufficient in scale variation, and their protocols are inadequate for fair comparison. In this paper, we introduce the Universal-Scale object detection Benchmark (USB). USB has variations in object scales and image domains by incorporating COCO with the recently proposed Waymo Open Dataset and Manga109-s dataset. To enable fair comparison and inclusive research, we propose training and evaluation protocols. They have multiple divisions for training epochs and evaluation image resolutions, like weight classes in sports, and compatibility across training protocols, like the backward compatibility of the Universal Serial Bus. Specifically, we request participants to report results with not only higher protocols (longer training) but also lower protocols (shorter training). Using the proposed benchmark and protocols, we analyzed eight methods and found weaknesses of existing COCO-biased methods. The code is available at https://github.com/shinya7y/UniverseNet .
翻译:基准,如COCO,在物体探测方面发挥着关键作用。然而,现有基准在规模变化方面不够充分,其协议也不足以进行公平的比较。在本文件中,我们采用了通用标准物体探测基准(USB)。USB将COCO与最近提议的Waymo开放数据集和Manga109-s数据集结合起来,从而在对象范围和图像域方面有差异。为了能够进行公平的比较和包容性研究,我们提议了培训和评价协议。它们有多个司,用于培训时代和评估图像解析,如体育体重课,以及各种培训协议的兼容性,如通用环球巴士的落后兼容性。具体地说,我们要求参与者报告结果,不仅采用更高的协议(长期培训),而且采用较低的协议(短期培训)。我们利用拟议的基准和协议,分析了八种方法,发现现有的CO-b-bads方法的弱点。该代码可在 https://github.com/shinya7y/UniverseNet上查阅。