形态学共享像素神经网络(MSPN)在空中监视中的车辆检测

T. Bharathi, S. Yuvaraj, D. Steffi, S. Perumal
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引用次数: 4

摘要

基于航拍图像的车辆检测在监视、交通监控和军事应用中日益成为一个重要的研究课题。本文所描述的系统主要针对航拍图像中的车辆自动检测。介绍了一种形态学神经网络方法从高分辨率航拍图像中提取车辆目标。该方法利用形态学共享像素神经网络(MSPN)将道路上的图像像素划分为车辆目标和非车辆目标,并开发了形态学预处理算法来识别候选车辆像素。并将该方法与现有的系统动态贝叶斯网络(DBN)进行比较。实验结果表明,MSPN具有良好的检测性能。该系统将对航拍图像的所有像素值进行顺序记录,并过滤掉若干车辆边缘的批次或部分。该方法在航拍图像中自动识别车辆方面优于现有算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle detection in aerial surveillance using morphological shared-pixels neural (MSPN) networks
Vehicle detection from aerial images is becoming an increasingly important research topic in surveillance, traffic monitoring and military applications. The system described in this paper focuses on automatic vehicle detection in the aerial images. This paper introduces a morphological neural network approach to extract vehicle targets from high resolution aerial images. In the approach the Morphological Shared-Pixels Neural Network (MSPN) is used to classify image pixels on roads into vehicle targets and non-vehicle targets, and a morphological preprocessing algorithm is developed to identify candidate vehicle pixels. The proposed method is going to compare with the existing system Dynamic Bayesian Network(DBN). It is going to be proven that the experimental results in MSPN have a good detection performance. The proposed system is going to record all pixel value of aerial images sequentially and filter out the batch or portion of the several vehicle edges. This method is quite better than existing algorithms in identifying the vehicles automatically in aerial images.
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