一种新的红外热图像显著性检测框架

Dahai Yu, Junwei Han, Yibo Ye, Zhijun Fang
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引用次数: 2

摘要

本文提出了一种基于红外热像仪视觉注意HOG特征的显著性框架的人体检测方法。该方法对显著性图进行了扩展,不仅包括空间特征,还包括凝视分布特征。在热视频期间,开发的框架包括几个计算阶段:(a)基于显著性对比概述感兴趣区域的区域;(b)选取HOG描述符的网格提取每张图像中的特征;(c)通过注视视觉注意图对训练特征进行优化;(d)最后使用支持向量机算法对训练好的分类器进行正人类显著性模型的配准。为了验证我们的算法,我们构建了一个由实时检测系统采集的热红外图像数据库,其中包含标记的凝视注意图。使用该数据库的实验结果表明,我们的算法优于以前最先进的热红外图像人类检测任务方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel saliency detection framework for infrared thermal images
In this paper, we present a novel human detection method by devising a saliency framework on visual attention HOG features for infrared thermal imaging cameras. The proposed approach extends the saliency map by including the representation not only spatial features but also gaze distribution features. During thermal videos, the developed framework consists several computational stages: (a) the regions of interest areas are outlined based on saliency contrast; (b) the grids of HOG descriptor are selected to extract features in each image; (c) the training features are optimized by gaze visual attention map; (d) finally support vector machine algorithm is used to register positive human saliency model for trained classifiers. In order to validate our algorithm, we constructed a thermal infrared image database collected by real-time inspection system that contains labeled gaze attention map. The experimental results using this database demonstrated that our algorithm outperforms previous state-of-the-art methods for human detection tasks in thermal infrared images.
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