Abstract
A thermal camera captures the temperature distribution of a scene as a thermal image. In thermal images, facial appearances of different people under different lighting conditions are similar. This is because facial temperature distribution is generally constant and not affected by lighting condition. This similarity in face appearances is advantageous for face detection. To detect faces in thermal images, cascade classifiers with Haar-like features are generally used. However, there are few studies exploring the local features for face detection in thermal images. In this paper, we introduce two approaches relying on local features for face detection in thermal images. First, we create new feature types by extending Multi-Block LBP. We consider a margin around the reference and the generally constant distribution of facial temperature. In this way, we make the features more robust to image noise and more effective for face detection in thermal images. Second, we propose an AdaBoost-based training method to get cascade classifiers with multiple types of local features. These feature types have different advantages. In this way we enhance the description power of local features. We did a hold-out validation experiment and a field experiment. In the hold-out validation experiment, we captured a dataset from 20 participants, comprising 14 males and 6 females. For each participant, we captured 420 images with 10 variations in camera distance, 21 poses, and 2 appearances (participant with/without glasses). We compared the performance of cascade classifiers trained by different sets of the features. The experiment results showed that the proposed approaches effectively improve the performance of face detection in thermal images. In the field experiment, we compared the face detection performance in realistic scenes using thermal and RGB images, and gave discussion based on the results.
Highlights
Face detection is fundamental in computer vision
For straight forward and clear comparison, we used the F-score to evaluate the performance of different cascade classifiers for thermal images and those for RGB images
As for face detection using RGB images, we can see the printed faces lower the F-score for both the cascade classifier with Haar-like features and that with
Summary
Face detection is fundamental in computer vision. Most of the existing works on face detection are based on visible images, because RGB color cameras are easy to obtain. Face detection in visible images has been around for decades with various problems tackled. There are still some problems which have not been completely solved. (1) Facial appearances in visible images are liable to change by lighting condition [1]. When the light source is on the right side of a face, this side of facial region appears brighter than that of left side in a visible
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