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首页> 外文期刊>Information Forensics and Security, IEEE Transactions on >Long Range Cross-Spectral Face Recognition: Matching SWIR Against Visible Light Images
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Long Range Cross-Spectral Face Recognition: Matching SWIR Against Visible Light Images

机译:远程跨光谱人脸识别:将SWIR与可见光图像匹配

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摘要

Short wave infrared (SWIR) is an emerging imaging modality in surveillance applications. It is able to capture clear long range images of a subject in harsh atmospheric conditions and at night time. However, matching SWIR images against a gallery of color images is a very challenging task. The photometric properties of images in these two spectral bands are highly distinct. This work presents a novel cross-spectral face recognition scheme that encodes images filtered with a bank of Gabor filters followed by three local operators: Simplified Weber Local Descriptor, Local Binary Pattern, and Generalized Local Binary Pattern. Both magnitude and phase of filtered images are encoded. Matching encoded face images is performed by using a symmetric I-divergence. We quantify the verification and identification performance of the cross-spectral matcher on two multispectral face datasets. In the first dataset (PRE-TINDERS), both SWIR and visible gallery images are captured at a close distance (about 2 meters). In the second dataset (TINDERS), the probe SWIR images are collected at longer ranges (50 and 106 meters). The results on PRE-TINDERS dataset form a baseline for matching long range data. We also demonstrate the capability of the proposed approach by comparing its performance with the performance of Faceit G8, a commercial face recognition engine distributed by L1. The results show that the designed method outperforms Faceit G8 in terms of verification and identification rates on both datasets.
机译:短波红外(SWIR)是监视应用中的一种新兴成像方式。它能够在恶劣的大气条件下和夜间捕获清晰的远距离图像。但是,将SWIR图像与彩色图像库进行匹配是一项非常具有挑战性的任务。这两个光谱带中图像的光度特性非常不同。这项工作提出了一种新颖的跨光谱人脸识别方案,该方案对使用一堆Gabor滤波器过滤后的图像进行编码,随后是三个本地运算符:简化Weber本地描述符,本地二进制模式和广义本地二进制模式。滤波图像的幅度和相位均被编码。匹配的编码面部图像通过使用对称I散度执行。我们在两个多光谱人脸数据集上量化了交叉光谱匹配器的验证和识别性能。在第一个数据集(PRE-TINDERS)中,SWIR和可见的画廊图像都在近距离(约2米)处捕获。在第二个数据集(TINDERS)中,在更长的距离(50和106米)处收集了探测SWIR图像。 PRE-TINDERS数据集上的结果形成了用于匹配远程数据的基线。通过比较其性能与L1发行的商用人脸识别引擎Faceit G8的性能,我们还证明了该方法的功能。结果表明,所设计的方法在两个数据集的验证和识别率方面均优于Faceit G8。

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