红外行人检测转换温度图

Yifan Zhao, Jingchun Cheng, Wei Zhou, Chunxi Zhang, Xiong Pan
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引用次数: 15

摘要

红外行人检测的目的是对室外热图像中的人进行检测。与白天可见图像(RGB图像)相比,它在黑暗环境或恶劣天气下显示出独特的优势。目前的大多数方法将红外检测与可见光图像相同,例如将红外图像视为特殊的灰度可见图像。在本文中,我们更强调红外图像中的底层温度信息来解决这个问题。基于红外图像形成理论,建立了红外图像-温度转换公式,该公式可以将红外图像转换为具有行人像素-温度值优先权的温度图。整个检测过程分为两个阶段。在第一阶段,我们使用一个通用检测器,它将红外图像视为灰度可见图像,以提供初级检测结果和行人位置先验(每张图像中置信度最高的行人检测框)。在第二阶段,我们将红外图像转换成相应的温度图,并训练一个温度网络进行检测。最终结果包括初级检测和温度网络输出,检测出同时具有图像和温度域特征的行人。结果表明,转换后的温度图像受环境因素的影响较小,其探测器与主探测器具有惊人的互补能力。我们对OTCBVS数据集和FLIR数据集这两个公开的红外数据集进行了广泛的实验和分析;并证明结合温度图的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Infrared Pedestrian Detection with Converted Temperature Map
Infrared pedestrian detection aims to detect persons in outdoor thermal images. It shows a unique advantage in dark environment or bad weather compared to daytime visible images (the RGB image). Most current methods treat infrared detection the same way as with visible images, e.g. regarding the infrared image as a special gray-scale visible image. In this paper, we tackle this problem with more emphasis on the underlying temperature information in infrared images. We build an image-temperature transformation formula based upon infrared image formation theory, which can convert infrared image into temperature map with the prior of pedestrian pixel-temperature value. The whole detection process follows a two-stage manner. In the first stage, we use a common detector which treats the infrared image as the gray-scale visible image to provide primary detection results and a pedestrian position prior (the highest-confidence pedestrian detection box in each image). In the second stage, we convert infrared images into corresponding temperature maps and train a temperature net for detection. The final results consist of both the primary detection and the temperature net outputs, detecting pedestrians with characteristics in both image and temperature domain. We show that the converted temperature image is less affected by environmental factors, and that its detector shows amazing complementary ability with the primary detector. We carry out extensive experiments and analysis on two public infrared datasets, the OTCBVS dataset and the FLIR dataset; and demonstrate the effectiveness of incorporating temperature maps.
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