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Towards Automated Face Detection in Thermal and Polarimetric Thermal Imagery

机译:在热成像和极化热成像中实现自动人脸检测

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Visible spectrum face detection algorithms perform pretty reliably under controlled lighting conditions. However, variations in illumination and application of cosmetics can distort the features used by common face detectors, thereby degrade their detection performance. Thermal and polarimetric thermal facial imaging are relatively invariant to illumination and robust to the application of makeup, due to their measurement of emitted radiation instead of reflected light signals. The objective of this work is to evaluate a government off-the-shelf wavelet based naive-Bayes face detection algorithm and a commercial off-the-shelf Viola-Jones cascade face detection algorithm on face imagery acquired in different spectral bands. New classifiers were trained using the Viola-Jones cascade object detection framework with preprocessed facial imagery. Preprocessing using Difference of Gaussians (DoG) filtering reduces the modality gap between facial signatures across the different spectral bands, thus enabling more correlated histogram of oriented gradients (HOG) features to be extracted from the preprocessed thermal and visible face images. Since the availability of training data is much more limited in the thermal spectrum than in the visible spectrum, it is not feasible to train a robust multi-modal face detector using thermal imagery alone. A large training dataset was constituted with DoG filtered visible and thermal imagery, which was subsequently used to generate a custom trained Viola-Jones detector. A 40% increase in face detection rate was achieved on a testing dataset, as compared to the performance of a pre-trained/baseline face detector. Insights gained in this research are valuable in the development of more robust multi-modal face detectors.
机译:可见光谱人脸检测算法在受控照明条件下的性能相当可靠。然而,化妆品的照度和使用上的变化会扭曲普通面部检测器使用的功能,从而降低其检测性能。由于热和极化热面部成像对发射的辐射而不是反射的光信号进行测量,因此它们相对于照明是相对不变的,并且对于化妆的应用也很稳定。这项工作的目的是评估在不同光谱波段获取的人脸图像上基于政府现成小波的朴素贝叶斯人脸检测算法和商业现成的Viola-Jones级联人脸检测算法。使用带有预处理的面部图像的Viola-Jones级联对象检测框架训练了新的分类器。使用高斯差分(DoG)滤波进行的预处理减小了跨不同光谱带的面部特征之间的模态间隙,从而使能够从预处理的热和可见面部图像中提取取向梯度(HOG)特征的更多相关直方图。由于训练数据的可用性在热光谱中比在可见光谱中受到更多的限制,因此仅使用热成像来训练鲁棒的多模式人脸检测器是不可行的。一个大型训练数据集由经过DoG滤波的可见光和热图像组成,随后用于生成定制的训练过的Viola-Jones检测器。与预训练/基线​​人脸检测器的性能相比,测试数据集的人脸检测率提高了40%。这项研究中获得的见识对开发更强大的多模式人脸检测器非常有价值。

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