一种鲁棒特征提取方法提高复杂背景下人脸检测性能

Dimitrios Alexios Karras
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引用次数: 0

摘要

本文提出了一种处理复杂背景下人脸检测问题的新方法。该方法将基于特定特征分析方法的鲁棒特征提取技术与基于神经网络的分类器集成在一起,该方法基于当前问题中识别的唯一类的特征分析方法。这样的特征分析旨在识别上述唯一识别类的主要特征。然后,在测试阶段,通过滑动窗口光栅扫描程序分析每个未知图像,通过第一阶段的神经分类器识别滑动窗口,作为属于前面提到的唯一类之一。在这样的滑动窗口标记过程之后,第二阶段的神经分类器应用于作为这样标记的滑动窗口序列的测试图像,以获得关于人脸是否存在于给定测试图像中的最终决定是合理的。虽然所提出的方法是第二阶段的程序,但很明显,其最关键的阶段是第一阶段的分类过程,因为如果能够获得良好的识别/标记准确性,它将大大促进最后的分类阶段。因此,本文的实验部分是针对在这一第一分类阶段分析人脸特定类别标注的准确性。
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A Robust Feature Extraction Methodology for Improved Face Detection Performance within a Complex Background
A novel methodology is presented in this paper for dealing with the problem of face detection within a complex background. The proposed approach integrates a robust feature extraction technique based on a specific method of eigenanalysis of the unique classes identified in the problem at hand, with neural network based classifiers. Such an eigenaiysis aims at identifying principal characteristics of the above mentioned uniquely identified classes. Each unknown image, in the testing phase, is then, analyzed through a sliding window raster scanning procedure to sliding windows identified, through a first stage neural classifier, as belonging to one of the unique classes previously mentioned. After such a sliding window labeling procedure it is reasonable for a second stage neural classifier to be applied to the testing image viewed as a sequence of such labeled sliding windows for obtaining a final decision about whether a face exists within the given test image or not. Although the proposed approach is a second stage procedure, it is obvious that its most critical phase is the first stage classification process, since, if good identification/ labeling accuracy could be then obtained, it would facilitate final classification stage a lot. Therefore, the experimental section of this paper is conducted with respect to analyzing face specific classes labeling accuracy at such a first classification stage.
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