Target Detection and Classification Improvements using Contrast Enhanced 16-bit Infrared Videos

C. Kwan, David Gribben
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引用次数: 3

Abstract

In our earlier target detection and classification papers, we used 8-bit infrared videos in the Defense Systems Information Analysis Center(DSIAC) video dataset. In this paper, we focus on how we can improve the target detection and classification results using 16-bit videos. One problem with the 16-bit videos is that some image frames have very low contrast. Two methods were explored to improve upon previous detection and classification results. The first method used to improve contrast was effectively the same as the baseline 8-bit video data but using the 16-bit raw data rather than the 8-bit data taken from the avi files. The second method used was a second order histogram matching algorithm that preserves the 16-bit nature of the videos while providing normalization and contrast enhancement. Results showed the second order histogram matching algorithm improved the target detection using You Only Look Once (YOLO) and classificationusing Residual Network (ResNet) performance. The average precision (AP) metric in YOLO was improved by 8%. This is quite significant. The overall accuracy (OA) of ResNet has been improved by 12%. This is also very significant.
使用对比度增强的16位红外视频改进目标检测和分类
在我们早期的目标检测和分类论文中,我们使用了国防系统信息分析中心(DSIAC)视频数据集中的8位红外视频。在本文中,我们重点研究了如何使用16位视频来改进目标检测和分类结果。16位视频的一个问题是一些图像帧的对比度很低。我们探索了两种方法来改进之前的检测和分类结果。用于提高对比度的第一种方法有效地与基线8位视频数据相同,但使用16位原始数据而不是从avi文件中获取的8位数据。第二种方法是二阶直方图匹配算法,它保留了视频的16位特性,同时提供了归一化和对比度增强。结果表明,二阶直方图匹配算法提高了使用You Only Look Once (YOLO)的目标检测性能和使用Residual Network (ResNet)的分类性能。YOLO的平均精度(AP)指标提高了8%。这是非常重要的。ResNet的整体准确率(OA)提高了12%。这也是非常重要的。
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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