CNN-SVM based vehicle detection for UAV platform

N. Valappil, Q. Memon
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引用次数: 6

Abstract

Conventional surveillance devices are deployed at fixed locations on road sideways, poles or on traffic lights, which provide a constant and fixed surveillance view of the urban traffic. Unmanned aerial vehicles (UAVs) have for last two decades received considerable attention in building smart and effective system with wider coverage using low cost, highly flexible unmanned platform for smart city infrastructure. Unlike fixed monitoring devices, the camera platform of aerial vehicles has many constraints, as it is in constant motion including titling and panning, and thus makes it difficult to process data for real time applications. The inaccuracy in object detection rates from UAV videos has motivated the research community to combine different approaches such as optical flow and supervised learning algorithms. The method proposed in this research incorporates steps that include Kanade-Lucas optical flow method for moving object detection, building connected graphs to isolate objects and convolutional neural network (CNN), followed by support vector machine (SVM) for final classification. The generated optical flow contains background (and tiny) objects detected as vehicle as the camera platform moves. The classifier introduced here rules out the presence of any other (moving) objects to be detected as vehicles. The methodology adopted is tested on a stationary and moving aerial videos. The system is shown to have performance accuracy of 100% in case of stationary video and 98% in case of video from aerial platform.
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基于CNN-SVM的无人机平台车辆检测
传统的监控设备部署在道路侧面、电线杆或交通灯的固定位置,提供对城市交通的持续和固定的监控视图。在过去的二十年中,无人机(uav)在使用低成本、高度灵活的无人平台为智慧城市基础设施建设智能、有效、覆盖范围更广的系统方面受到了相当大的关注。与固定监控设备不同的是,飞行器的摄像平台处于不断的运动状态,包括倾斜和平移,这给实时应用的数据处理带来了困难。无人机视频中目标检测率的不准确性促使研究界结合不同的方法,如光流和监督学习算法。本研究提出的方法采用了Kanade-Lucas光流法进行运动目标检测、建立连接图隔离目标、卷积神经网络(CNN)、支持向量机(SVM)进行最终分类等步骤。生成的光流包含背景(和微小)物体,当相机平台移动时检测到车辆。这里介绍的分类器排除了任何其他(移动)物体被检测为车辆的存在。对所采用的方法进行了固定和移动航拍视频的测试。实验结果表明,该系统对静止视频的性能精度为100%,对空中平台视频的性能精度为98%。
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