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Hand Detection Using Cascade of Softmax Classifiers

机译:使用Softmax分类器的级联进行手检测

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Sliding-window based multiclass hand posture detections are often performed by detecting postures of each predefined category using an independent detector, which makes it lack efficiency and results in high postures confusion rates in real-time applications. To tackle such problems, in this work, an efficient cascade detector that integrates multiple softmax-based binary (SftB) models and a softmax-based multiclass (SftM) model is investigated to perform multiclass posture detection in parallel. The SftB models are used to distinguish the predefined postures from the background regions, and the SftM model is applied to discriminate among all the predefined hand posture categories. Another usage of the cascade structure is that it could effectively decompose the complexity of background pattern space and therefore improve the detection accuracy. In addition, to balance the detection accuracy and efficiency, the HOG features of increasing resolutions will be adopted by classifiers of increasing stage-levels in the cascade structure. The experiments are implemented under various scenarios with complicated background and challenging lightings. Results show the superiority of the proposed SftB classifiers over the traditional binary classifiers such as logistic regression, as well as the accuracy and efficiency improvements brought by the softmax-based cascade architecture compared with the noncascade multiclass softmax detectors.
机译:基于滑动窗口的多类手部姿势检测通常是通过使用独立的检测器检测每个预定义类别的姿势来执行的,这使其效率低下,并在实时应用中导致较高的姿势混淆率。为了解决这些问题,在这项工作中,研究了一种有效的级联检测器,该检测器集成了多个基于softmax的二进制(SftB)模型和基于softmax的多类(SftM)模型,以并行执行多类姿势检测。 SftB模型用于将预定义姿势与背景区域区分开,SftM模型用于在所有预定义手形姿势类别之间进行区分。级联结构的另一种用法是它可以有效地分解背景图案空间的复杂性,从而提高检测精度。另外,为了平衡检测精度和效率,级联结构中分级级增加的分类器将采用分辨率提高的HOG功能。实验是在各种情况下实施的,背景复杂且照明条件复杂。结果表明,与非级联多类softmax检测器相比,提出的SftB分类器优于传统的二元分类器(如逻辑回归),以及基于softmax的级联体系结构带来的准确性和效率提高。

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