Human Detection Using Illumination Invariant Feature Extraction for Natural Scenes in Big Data Video Frames

A. Alzughaibi, Z. Chaczko
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引用次数: 1

Abstract

This research proposes a reliable machine learning based computational solution for human detection. The proposed model is specifically applicable for illumination-variant natural scenes in big data video frames. In order to solve the illumination variation problem, a new feature set is formed by extracting features using histogram of gradients (HoG) and linear phase quantization (LPQ) techniques, which are combined to form a single feature-set to describe features in illumination variant natural scenes. Pre-processing is applied to reduce the search space and improve results, and as the humans are in constant motion in the frames, a search space pruning algorithm is applied to reduce the search space and improve detection accuracy. Non-maximal suppression is also applied for improved performance. A Support Vector Machine (SVM) based classifier is used for fast and accurate detection. Most of the current state-of-the-art detectors face numerous problems including false, missed, and inaccurate detections. The proposed detector model shows good performance, which was validated using relevant UCF and CDW test data-sets. In order to compare the performance of the proposed methodology with the state-of-the-art detectors, some selected detected frames were chosen considering their Receiver Operating Characteristic (ROC) curves. These curves are plotted to compare and evaluate the results based on miss rates and true positives rates. The results show the proposed model achieves best results.
基于光照不变特征提取的大数据视频帧自然场景人体检测
本研究提出了一种可靠的基于机器学习的人体检测计算解决方案。该模型特别适用于大数据视频帧中光照变化的自然场景。为了解决光照变化问题,利用梯度直方图(HoG)和线性相位量化(LPQ)技术提取特征,形成一个新的特征集,并将其组合成一个单一的特征集来描述光照变化自然场景中的特征。为了减少搜索空间,提高检测精度,采用了预处理方法,并且由于人在帧中是不断运动的,采用了搜索空间修剪算法来减少搜索空间,提高检测精度。非最大抑制也用于提高性能。基于支持向量机(SVM)的分类器用于快速准确的检测。目前大多数最先进的探测器都面临着许多问题,包括错误、遗漏和不准确的检测。利用相关的UCF和CDW测试数据集验证了该检测器模型的有效性。为了将所提出的方法与最先进的检测器的性能进行比较,根据其接收者工作特征(ROC)曲线选择了一些选定的检测帧。绘制这些曲线是为了比较和评估基于漏检率和真阳性率的结果。结果表明,所提出的模型达到了最佳效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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