自动键面选择在图像中识别已知的人

Ikram Ben Kouas, P. Joly
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引用次数: 0

摘要

我们提出了一组特征来描述图像中的人脸。目标是使用这些特征来自动选择最相关的图像来训练识别工具。这些特征是从允许识别过程通常需要的一组约束中派生出来的。使用基于Adaboost算法的过滤工具作为基本流程来测试这些特征与此类任务的相关性。在这些实验中,我们获得了87%的优选率。也就是说,在过滤后保留的所有人脸中,87%符合预定义的约束条件,可以用来训练识别工具。
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Automatic keyface selection for known people identification in images
We propose a set of features to characterize faces in images. The goal is to use these features to automatically select the most relevant images to train an identification tool. Those features are derived from a set of constraints usually required to allow the recognition process. A filtering tool based on the Adaboost algorithm is used as a basic process to test the relevance of these features for such a task. In these experiments we obtained a rate of 87% of good selection. In other words, among all the faces kept after the filtering process, 87% are compliant with the predefined constraints, and can be used to train an identification tool.
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