异质环境下的交叉光谱人脸识别:可见光与短波红外图像匹配的案例研究

N. Kalka, T. Bourlai, B. Cukic, L. Hornak
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引用次数: 56

摘要

本文研究了异构环境下的交叉光谱人脸识别问题。具体来说,我们研究了短波红外(SWIR)人脸图像在受控或非受控条件下与可见光图像匹配的优点和局限性。这项工作的贡献有三方面。首先,我们考虑了三个不同的数据库,它们代表了三种不同的数据采集条件,即在完全控制(室内)、半控制(室内距离≥50m)和非控制(室外操作条件)环境下获取的图像。其次,我们展示了在可控和具有挑战性的场景下进行SWIR交叉光谱匹配的可能性。第三,我们说明了如何利用光度归一化和我们提出的交叉光度评分水平融合规则来提高所有场景下的交叉光谱匹配性能。我们使用了商业和学术(基于纹理的)人脸匹配器,并进行了一系列实验,表明SWIR图像可以与可见图像匹配,并取得了令人鼓舞的结果。我们的实验还表明,识别性能的提高程度取决于场景。
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Cross-spectral face recognition in heterogeneous environments: A case study on matching visible to short-wave infrared imagery
In this paper we study the problem of cross spectral face recognition in heterogeneous environments. Specifically we investigate the advantages and limitations of matching short wave infrared (SWIR) face images to visible images under controlled or uncontrolled conditions. The contributions of this work are three-fold. First, three different databases are considered, which represent three different data collection conditions, i.e., images acquired in fully controlled (indoors), semi-controlled (indoors at standoff distances ≥ 50m), and uncontrolled (outdoor operational conditions) environments. Second, we demonstrate the possibility of SWIR cross-spectral matching under controlled and challenging scenarios. Third, we illustrate how photometric normalization and our proposed cross-photometric score level fusion rule can be utilized to improve cross-spectral matching performance across all scenarios. We utilized both commercial and academic (texture-based) face matchers and performed a set of experiments indicating that SWIR images can be matched to visible images with encouraging results. Our experiments also indicate that the level of improvement in recognition performance is scenario dependent.
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