基于深度神经网络的航空影像车辆分类

Vysakh S. Mohan, V. Sowmya, K. Soman
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引用次数: 9

摘要

从航空图像中检测车辆在监视、军事应用、交通地段管理、边境巡逻和交通监控方面具有几个现实世界的意义。本文提出的系统旨在自动化从航空图像中检测车辆的过程,而不是依赖于人工操作。在这里,我们为所提出的检测系统确定了一个最优的分类策略,这是设计车辆检测管道的初始阶段。本研究重点研究了Alexnet[6]和VGG-16[7]等标准神经网络模型的特征提取能力,并将其与经典特征提取技术(如直方图定向梯度和奇异值分解)进行了比较。提取的特征在标准机器学习算法(如支持向量机和随机森林)上进行基准测试。观察到,神经网络提取的特征在VEDAI数据集上的总体分类准确率为99%。该分类被视为一个二元类问题,其中车辆为一类,其余均为非车辆。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Neural Networks as Feature Extractors for Classification of Vehicles in Aerial Imagery
Detection of vehicles from aerial images have several real world implications in surveillance, military applications, traffic lot management, border patrol and traffic monitoring. The system proposed in this paper intends to automate the process of detecting vehicles from aerial images, rather than relying on a human operator. Here, we identify an optimum classification strategy for the proposed detection system, which is the initial stage of designing a vehicle detection pipeline. This research focuses on the feature extraction capabilities of standard neural network models like, Alexnet [6] and VGG-16 [7], which are compared against classic feature extraction techniques, like Histogram of Oriented Gradients and Singular Value Decomposition. The extracted features are benchmarked across standard machine learning algorithms such as Support Vector Machine and random forest. It is observed that the neural net extracted features gives an overall classification accuracy of 99% on the VEDAI dataset. The classification was treated as a binary class problem with vehicles as one class and rest everything as non-vehicles.
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