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SOD-MTGAN: Small Object Detection via Multi-Task Generative Adversarial Network

机译:SOD-MTGAN:通过多任务生成对抗网络进行小物体检测

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Object detection is a fundamental and important problem in computer vision. Although impressive results have been achieved on large/medium sized objects in large-scale detection benchmarks (e.g. the COCO dataset), the performance on small objects is far from satisfactory. The reason is that small objects lack sufficient detailed appearance information, which can distinguish them from the background or similar objects. To deal with the small object detection problem, we propose an end-to-end multi-task generative adversarial network (MTGAN). In the MTGAN, the generator is a super-resolution network, which can up-sample small blurred images into fine-scale ones and recover detailed information for more accurate detection. The discriminator is a multitask network, which describes each super-resolved image patch with a real/fake score, object category scores, and bounding box regression offsets. Furthermore, to make the generator recover more details for easier detection, the classification and regression losses in the discriminator are back-propagated into the generator during training. Extensive experiments on the challenging COCO dataset demonstrate the effectiveness of the proposed method in restoring a clear super-resolved image from a blurred small one, and show that the detection performance, especially for small sized objects, improves over state-of-the-art methods.
机译:对象检测是计算机视觉中的一个基本而重要的问题。尽管在大规模检测基准(例如COCO数据集)上对大型/中型对象已经取得了令人印象深刻的结果,但在小型对象上的性能却远远不能令人满意。原因是小物体缺少足够的详细外观信息,这些信息可以将它们与背景或类似物体区分开。为了解决小目标检测问题,我们提出了一种端到端的多任务生成对抗网络(MTGAN)。在MTGAN中,生成器是一个超分辨率网络,可以将小的模糊图像上采样到精细图像,并恢复详细信息以进行更精确的检测。鉴别器是一个多任务网络,该网络用真实/虚假分数,对象类别分数和边界框回归偏移量来描述每个超分辨图像块。此外,为了使生成器恢复更多细节以便于检测,在训练过程中,将鉴别器中的分类和回归损失反向传播到生成器中。在具有挑战性的COCO数据集上进行的大量实验证明了该方法从模糊的小图像中恢复清晰的超分辨图像的有效性,并显示出其检测性能(特别是对于小型物体)比现有技术有所提高。方法。

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