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Stingray Detection of Aerial Images Using Augmented Training Images Generated by a Conditional Generative Model

机译:使用条件生成模型生成的增强训练图像对空中图像进行黄貂鱼检测

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In this paper, we present an object detection method that tackles the stingray detection problem based on aerial images. In this problem, the images are aerially captured on a sea-surface area by using an Unmanned Aerial Vehicle (UAV), and the stingrays swimming under (but close to) the sea surface are the target we want to detect and locate. To this end, we use a deep object detection method, faster RCNN, to train a stingray detector based on a limited training set of images. To boost the performance, we develop a new generative approach, conditional GLO, to increase the training samples of stingray, which is an extension of the Generative Latent Optimization (GLO) approach. Unlike traditional data augmentation methods that generate new data only for image classification, our proposed method that mixes foreground and background together can generate new data for an object detection task, and thus improve the training efficacy of a CNN detector. Experimental results show that satisfiable performance can be obtained by using our approach on stingray detection in aerial images.
机译:在本文中,我们提出一种对象检测方法,该方法可解决基于航空图像的黄貂鱼检测问题。在这个问题中,图像是使用无人飞行器(UAV)在海面区域进行空中捕获的,而在海面下(但靠近海面)游泳的黄貂鱼是我们要检测和定位的目标。为此,我们使用一种深度物体检测方法(更快的RCNN)来基于有限的图像训练集训练黄貂鱼探测器。为了提高性能,我们开发了一种新的生成方法,即有条件的GLO,以增加黄貂鱼的训练样本,这是“生成潜伏优化”(GLO)方法的扩展。与仅为图像分类生成新数据的传统数据增强方法不同,我们提出的将前景和背景混合在一起的方法可以为目标检测任务生成新数据,从而提高了CNN检测器的训练效率。实验结果表明,通过使用我们的航空影像中黄貂鱼检测方法,可以获得令人满意的性能。

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