Deep Neural Networks vs Bag of Features for Hand Gesture Recognition

R. Mîrsu, G. Simion, C. Căleanu, Oana Ursulescu, Ioana-Monica Pop-Calimanu
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引用次数: 3

Abstract

Deep Neural Networks and their associated learning paradigm, Deep Learning, represent one of the hottest approaches used in image understanding and recognition. As their performances depends quasi-linearly on the amount of available data, the typical case studies in the literature assume the availability of huge datasets. This paper proposes to analyze several deep neural networks (trained from the scratch or pre-trained), test their efficiency in the problem of hand gesture recognition, and compare the results to a state-of-the-art classical method, the bag of features, for the case of small databases.
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深度神经网络与手势识别的特征包
深度神经网络及其相关的学习范式,深度学习,代表了图像理解和识别中最热门的方法之一。由于它们的性能与可用数据量呈拟线性关系,因此文献中的典型案例研究假设了大量数据集的可用性。本文提出分析几种深度神经网络(从零开始训练或预训练),测试它们在手势识别问题上的效率,并将结果与最先进的经典方法-特征包方法进行比较,用于小型数据库的情况。
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