一种基于YUV色彩空间特征袋的火焰检测算法

Zhaoguang Liu, Xing Zhang, Yang-Yang, Cengceng Wu
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引用次数: 13

摘要

基于计算机视觉的火灾探测包括火焰探测和烟雾探测。本文提出了一种新的火焰检测算法,该算法基于YUV颜色空间中的特征袋技术。受图像和视频中火焰的颜色会落在颜色空间的特定区域的启发,我们的方案在训练阶段基于代码本建立了火焰像素和非火焰像素的模型。在测试阶段,将输入图像分成若干N×N块,并对每个块分别进行分类。在每个N×N块中,YUV颜色空间中的像素值被提取为特征,就像在训练阶段一样。实验结果表明,与替代算法相比,我们的方法可以大大减少误报警的数量,同时也保证了阳性样本的准确分类。该方法的分类性能优于已有的分类算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A flame detection algorithm based on Bag-of-Features in the YUV color space
Computer vision-based fire detection involves flame detection and smoke detection. This paper proposes a new flame detection algorithm, which is based on a Bag-of-Features technique in the YUV color space. Inspired by that the color of flame in image and video will fall in certain regions in the color space, models of flame pixels and non-flame pixels are established based on code book in the training phase in our proposal. In the testing phase, the input image is split into some N×N blocks and each block is classified respectively. In each N×N block, the pixels values in the YUV color space are extracted as features, just as in the training phase. According to the experimental results, our proposed method can reduce the number of false alarms greatly compared with an alternative algorithm, while it also ensures the accurate classification of positive samples. The classification performance of our proposed method is better than that of alternative algorithms.
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