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Energy-transfer features and their application in the task of face detection

机译:能量传递特征及其在面部检测任务中的应用

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In this paper, we describe a novel and interesting approach for extracting the image features. The features we propose are efficient and robust; the feature vectors of relatively small dimensions are sufficient for successful recognition. We call them the energy-transfer features. In contrast, the classical features (e.g. HOG, Haar features) that are combined with the trainable classifiers (e.g. a support vector machine, neural network) require large training sets due to their high dimensionality. The large training sets are difficult to acquire in many cases. In addition to that, the large training sets slow down the training phase. Moreover, the high dimension of feature vector also slows down the detection phase and the methods for the reduction of feature vector must be used. These shortcomings became the motivation for creating the features that are able to describe the object of interest with a relatively small number of numerical values without the use of methods for the reduction of feature vector. In this paper, we demonstrate the properties of our features in the task of face detection.
机译:在本文中,我们描述了一种提取图像特征的新颖和有趣的方法。我们提出的功能是高效且坚固的;相对较小尺寸的特征向量足以成功识别。我们称之为能量传递功能。相反,与可培训分类器(例如支持向量机器,神经网络)组合的经典特征(例如Hog,Haar特征)需要大量培训集。在许多情况下,大型训练集很难获得。除此之外,大型培训集还会减缓训练阶段。此外,特征向量的高尺寸也减慢了检测阶段,并且必须使用用于减少特征载体的方法。这些缺点成为创建能够用相对少量的数值描述感兴趣对象的功能的动机,而不使用用于减少特征向量的方法。在本文中,我们展示了我们在面部检测任务中的特征的性质。

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