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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Optimization of a training set for more robust face detection
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Optimization of a training set for more robust face detection

机译:优化训练集以增强人脸识别能力

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摘要

The performance of a learning-based method highly depends on the quality of a training set. However, it is very challenging to collect an efficient and effective training set for training a good classifier, because of the high dimensionality of the feature space and the complexity of decision boundaries. In this research, we study the methodology of automatically obtaining an optimal training set for robust face detection by resampling the collected training set. We propose a genetic algorithm (GA) and manifold-based method to resample a given training set for more robust face detection. The motivations behind lie in two folds: (1) dynamic optimization, diversity, and consistency of the training samples are cultivated by the evolutionary nature of GA and (2) the desirable non-linearity of the training set is preserved by using the manifold-based resampling. We demonstrate the effectiveness of the Proposed method through experiments and Comparisons to other existing face detectors. The system trained from the training set by the proposed method has achieved 90.73% accuracy with no false alarm on MIT+CMU frontal face test set-the best result reported so far to our knowledge. Moreover, as a fully automatic technology, the proposed method can significantly facilitate the preparation of training sets for obtaining well-performed object detection systems in different applications.
机译:基于学习的方法的性能高度取决于训练集的质量。但是,由于特征空间的高维性和决策边界的复杂性,收集有效且有效的训练集来训练良好的分类器非常具有挑战性。在这项研究中,我们研究了通过重新采样所收集的训练集来自动获得用于鲁棒脸部检测的最佳训练集的方法。我们提出了一种遗传算法(GA)和基于流形的方法来对给定的训练集进行重新采样,以实现更鲁棒的面部检测。背后的动机有两个方面:(1)通过GA的进化性质来培养训练样本的动态优化,多样性和一致性,以及(2)通过使用流形可以保留训练集的理想非线性。基于重采样。我们通过实验和与其他现有人脸检测器的比较证明了该方法的有效性。通过所提出的方法从训练集中训练出来的系统在MIT + CMU正面测试装置上没有误报的情况下达到了90.73%的准确度,这是迄今为止我们所知的最佳结果。此外,作为一种全自动技术,提出的方法可以显着促进训练集的准备,以在不同应用中获得性能良好的物体检测系统。

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