Objects365: A Large-Scale, High-Quality Dataset for Object Detection

Shuai Shao, Zeming Li, Tianyuan Zhang, Chao Peng, Gang Yu, Xiangyu Zhang, Jing Li, Jian Sun
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引用次数: 380

Abstract

In this paper, we introduce a new large-scale object detection dataset, Objects365, which has 365 object categories over 600K training images. More than 10 million, high-quality bounding boxes are manually labeled through a three-step, carefully designed annotation pipeline. It is the largest object detection dataset (with full annotation) so far and establishes a more challenging benchmark for the community. Objects365 can serve as a better feature learning dataset for localization-sensitive tasks like object detection and semantic segmentation. The Objects365 pre-trained models significantly outperform ImageNet pre-trained models with 5.6 points gain (42 vs 36.4) based on the standard setting of 90K iterations on COCO benchmark. Even compared with much long training time like 540K iterations, our Objects365 pretrained model with 90K iterations still have 2.7 points gain (42 vs 39.3). Meanwhile, the finetuning time can be greatly reduced (up to 10 times) when reaching the same accuracy. Better generalization ability of Object365 has also been verified on CityPersons, VOC segmentation, and ADE tasks. The dataset as well as the pretrained-models have been released at www.objects365.org.
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Objects365:用于对象检测的大规模高质量数据集
在本文中,我们引入了一个新的大规模目标检测数据集,Objects365,它有365个对象类别,超过600K的训练图像。通过精心设计的标注管道,对超过1000万个高质量的边界框进行手动标记。它是迄今为止最大的目标检测数据集(带有完整的注释),并为社区建立了更具挑战性的基准。Objects365可以作为一个更好的特征学习数据集,用于对象检测和语义分割等对定位敏感的任务。基于COCO基准上90K次迭代的标准设置,Objects365预训练模型显著优于ImageNet预训练模型,获得5.6点的增益(42对36.4)。即使与像540K次迭代这样的长时间训练相比,我们的Objects365预训练模型与90K次迭代仍然有2.7分的增益(42比39.3)。同时,在达到相同精度的情况下,微调时间可大大减少(最多可减少10倍)。在CityPersons、VOC分割和ADE任务上也验证了Object365较好的泛化能力。该数据集以及预训练模型已在www.objects365.org上发布。
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