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On the use of deep neural networks for the detection of small vehicles in ortho-images

机译:关于使用深度神经网络检测正射影像中的小型车辆

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This paper addresses the question of the detection of small targets (vehicles) in ortho-images. This question differs from the general task of detecting objects in images by several aspects. First, the vehicles to be detected are small, typically smaller than 20×20 pixels. Second, due to the multifarious-ness of the landscapes of the earth, several pixel structures similar to that of a vehicle might emerge (roof tops, shadow patterns, rocks, buildings), whereas within the vehicle class the inter-class variability is limited as they all look alike from afar. Finally, the imbalance between the vehicles and the rest of the picture is enormous in most cases. Specifically, this paper is focused on the detection tasks introduced by the VEDAI dataset [1]. This work supports an extensive study of the problems one might face when applying deep neural networks with low resolution and scarce data and proposes some solutions. One of the contributions of this paper is a network severely outperforming the state-of-the-art while being much simpler to implement and a lot faster than competitive approaches. We also list the limitations of this approach and provide several new ideas to further improve our results.
机译:本文提出了在正射影像中检测小目标(车辆)的问题。这个问题在几个方面与检测图像中的对象的一般任务有所不同。首先,要检测的车辆很小,通常小于20×20像素。其次,由于地球景观的多样性,可能会出现一些类似于车辆的像素结构(车顶,阴影图案,岩石,建筑物),而在车辆类别中,类别间的可变性受到限制因为它们在远处看起来都很相似。最后,在大多数情况下,车辆与图片其余部分之间的不平衡是巨大的。具体来说,本文重点介绍由VEDAI数据集[1]引入的检测任务。这项工作支持对使用低分辨率和稀缺数据的深度神经网络可能会遇到的问题进行广泛的研究,并提出了一些解决方案。本文的贡献之一是,与竞争方法相比,该网络在性能上要远远优于最新技术,并且易于实施,并且速度要快得多。我们还列出了这种方法的局限性,并提供了一些新的想法来进一步改善我们的结果。

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