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CNN Adaptations for Boat Detection in Aerial Images Tested on Yolo v2

机译:在YOLO V2上测试的航空图像中船舶检测的CNN适应

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In this article, we focus on boat real-time detection in aerial images taken by UAVs Unmanned Aerial Vehicles. Several methods dealing with this problem are based on convolutional networks. Generally, they start from existing networks that have demonstrated their effectiveness with datasets like COCO Common Object in Context [1] and adapt them to improve their performance on aerial images. The adaptations made should not cause a higher execution time than the initial network, especially if the image processing and detection must be done in real-time. They must also participate in the increase in Recall by detecting even small objects on aerial images which is the case of most objects present in photos taken at high altitude. The purpose of this article is to test the effectiveness of certain adaptations with our boat dataset. We will also propose new adaptations. The tests will be performed using the Yolo v2 neural network [2].
机译:在这篇文章中,我们专注于由无人机无人机航空车辆拍摄的空中图像中的船只实时检测。 处理此问题的几种方法基于卷积网络。 通常,他们从现有网络开始,该网络已经在上下文[1]中与Coco Commonet物体等数据集一起证明了它们的效率,并调整它们以提高其在空中图像上的性能。 所做的适应不应导致比初始网络更高的执行时间,特别是如果必须实时地完成图像处理和检测。 它们还必须通过检测在空中图像上的甚至小物体来参与召回的增加,这是在高海拔地区拍摄的照片中存在的大多数物体的情况。 本文的目的是使用我们的船舶数据集测试某些适应的有效性。 我们还将提出新的适应。 测试将使用YOLO V2神经网络[2]进行。

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