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Exploring Effective Methods to Improve the Performance of Tiny Object Detection

机译:探索有效方法来提高微小物体检测的性能

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In this paper, we present our solution of the 1st Tiny Object Detection (TOD) Challenge. The purpose of the challenge is to detect tiny person objects (2-20 pixels) in large-scale images. Due to the extreme small object size and low signal-to-noise ratio, the detection of tiny objects is much more challenging than objects in other datasets such as COCO and CityPersons. Based on Faster R-CNN, we explore some effective and general methods to improve the detection performance of tiny objects. Since the model architectures will not be changed, these methods are easy to implement. Accordingly, we obtain the 2nd place with the AP_(50)~(tiny) score of 71.53 in the challenge.
机译:在本文中,我们介绍了第一个微小物体检测(TOD)挑战的解决方案。 挑战的目的是在大规模图像中检测微小的人物物体(2-20像素)。 由于极端的对象尺寸和低信噪比,微小物体的检测比其他数据集中的物体更具有挑战性,如Coco和Cocalsons。 基于更快的R-CNN,我们探讨了改善微小物体的检测性能的一些有效和一般的方法。 由于模型架构不会更改,因此这些方法易于实现。 因此,我们在挑战中获得了AP_(50)〜(微小)得分的第2位。

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