面向梯度的加泊增强直方图在航空监测中的应用

A. L. D. de Ocampo, A. Bandala, E. Dadios
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引用次数: 0

摘要

在基于无人机的人体检测中,特征向量的提取和选择是保证检测系统性能最优的关键任务之一。尽管无人机摄像机捕获高分辨率图像,但人体的相对尺寸使人处于非常低的分辨率和对比度。能够在低对比度图像中充分区分局部对称模式的特征描述符可以提高植物环境中人体特征的检测。本文提出并给出了这样一个描述符。最初,采集的图像被馈送到地面站的数字处理器,在那里执行人类检测算法。人类检测算法的一部分是GeHOG特征提取,其中使用一组Gabor滤波器从原始图像生成纹理图像。计算Gabor图像中每个细胞的局部能量来识别优势方向。基于Gabor图像的优势取向指数和累积的局部能量,对传统HOG的bins进行增强。为了测量所提出的特征的性能,将gabor增强的HOG (GeHOG)和HOG的其他两个最新改进,即边缘定向梯度直方图(HEOG)和改进的HOG (ImHOG)用于INRIA数据集和一个由无人机捕获的在田间工作的农民自定义数据集上的人类检测。所提出的特征描述符显着提高了人类检测,并且比传统HOG的最新改进表现更好。使用GeHOG将INRIA数据集中人类检测的精度提高到98.23%。所提出的特征可以显著提高监测系统中的人体检测,特别是在植物环境中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gabor-enhanced histogram of oriented gradients for human presence detection applied in aerial monitoring
In UAV-based human detection, the extraction and selection of the feature vector are one of the critical tasks to ensure the optimal performance of the detection system. Although UAV cameras capture high-resolution images, human figures' relative size renders persons at very low resolution and contrast. Feature descriptors that can adequately discriminate between local symmetrical patterns in a low-contrast image may improve a human figures' detection in vegetative environments. Such a descriptor is proposed and presented in this paper. Initially, the acquired images are fed to a digital processor in a ground station where the human detection algorithm is performed. Part of the human detection algorithm is the GeHOG feature extraction, where a bank of Gabor filters is used to generate textured images from the original. The local energy for each cell of the Gabor images is calculated to identify the dominant orientations. The bins of conventional HOG are enhanced based on the dominant orientation index and the accumulated local energy in Gabor images. To measure the performance of the proposed features, Gabor-enhanced HOG (GeHOG) and other two recent improvements to HOG, Histogram of Edge Oriented Gradients (HEOG) and Improved HOG (ImHOG), are used for human detection on INRIA dataset and a custom dataset of farmers working in fields captured via unmanned aerial vehicle. The proposed feature descriptor significantly improved human detection and performed better than recent improvements in conventional HOG. Using GeHOG improved the precision of human detection to 98.23% in the INRIA dataset. The proposed feature can significantly improve human detection applied in surveillance systems, especially in vegetative environments.
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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