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Joint and transfer learning of CNN and similarity metric for comparing UAV video image patches

机译:CNN的联合和转移学习以及用于比较无人机视频图像补丁的相似性度量

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摘要

Comparing Unmanned Aerial Vehicle (UAV) video image patches is a fundamental task in UAV video image processing. The main difficulty lies in the wide variety of appearance changes in images taken under different UAV imaging conditions, such as jitter, changing points of view, frequent undefined motion, illumination changes and etc. The usual algorithms which are based on the hand-craft features and independently predefined similarity metrics, cannot deal with these factors well. Motivated by recent successes on learning deep feature representations and feature similarity metric, a method which jointly models and learns these two objects is proposed here. Especially, comparing UAV video image patches is deemed as a binary classification problem and a Convolutional Neural Network (CNN) based comparing system is developed. It is composed of three parts: (1) two stream CNNs, (2) one similarity metric network, (3) one softmax layer. To jointly learn the CNNs and similarity metric, the available standard natural image datasets are employed and two new datasets representing typical satellite and UAV imaging scenes are built. Furthermore, over the datasets from different imaging scenes, the transfer joint learning of the proposed comparing system is investigated. The primary experimental results show that the proposed method can significantly outperform the recent results of the hand-craft feature based comparing methods.
机译:在无人机视频图像处理中,比较无人机视频图像补丁是一项基本任务。主要的困难在于在不同的无人机成像条件下拍摄的图像的外观变化多种多样,例如抖动,视角变化,频繁的不确定运动,照明变化等。基于手工艺特征的常用算法以及独立预定义的相似性指标无法很好地处理这些因素。基于最近在学习深度特征表示和特征相似性度量方面的成功,本文提出了一种联合建模和学习这两个对象的方法。特别地,比较无人机视频图像补丁被视为二进制分类问题,并且开发了基于卷积神经网络(CNN)的比较系统。它由三部分组成:(1)两个流CNN,(2)一个相似性度量网络,(3)一个softmax层。为了共同学习CNN和相似性度量,采用了可用的标准自然图像数据集,并建立了代表典型卫星和无人机成像场景的两个新数据集。此外,在来自不同成像场景的数据集上,研究了所提出的比较系统的转移联合学习。初步的实验结果表明,所提出的方法可以明显优于基于手工特征的比较方法的最新结果。

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