An Embedded Neural Network Approach for Reinforcing Deep Learning: Advancing Hand Gesture Recognition

Anwar Mira, Olaf Hellwich
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Abstract

Deep neural networks (DNNs) can face limitations during training for recognition, motivating this study to improve recognition capabilities by optimizing deep learning features for hand gesture image recognition. We propose a novel approach that enhances features from well-trained DNNs using an improved radial basis function (RBF) neural network, targeting recognition within individual gesture categories. We achieve this by clustering images with a self-organizing map (SOM) network to identify optimal centers for RBF training. Our enhanced SOM, employing the Hassanat distance metric, outperforms the traditional K-Means method across a comparative analysis of various distance functions and the expanded number of cluster centers, accurately identifying hand gestures in images. Our training pipeline learns from hand gesture videos and static images, addressing the growing need for machines to interact with gestures. Despite challenges posed by gesture videos, such as sensitivity to hand pose sequences within a single gesture category and overlapping hand poses due to the high similarities and repetitions, our pipeline achieved significant enhancement without requiring time-related training data. We also improve the recognition of static hand pose images within the same category. Our work advances DNNs by integrating deep learning features and incorporating SOM for RBF training.
强化深度学习的嵌入式神经网络方法:推进手势识别
深度神经网络(DNN)在识别训练过程中可能会遇到一些限制,这促使本研究通过优化手势图像识别的深度学习特征来提高识别能力。我们提出了一种新方法,利用改进的径向基函数(RBF)神经网络来增强训练有素的 DNN 的特征,目标是识别各个手势类别。为此,我们使用自组织图(SOM)网络对图像进行聚类,以确定 RBF 训练的最佳中心。我们的增强型 SOM 采用哈萨纳特距离度量,在对各种距离函数和扩大的聚类中心数量进行比较分析时,其性能优于传统的 K-Means 方法,能准确识别图像中的手势。我们的训练管道从手势视频和静态图像中学习,满足了机器与手势交互日益增长的需求。尽管手势视频带来了一些挑战,例如对单一手势类别中的手部姿势序列的敏感性,以及由于高度相似和重复而导致的手部姿势重叠,但我们的管道在不需要与时间相关的训练数据的情况下实现了显著提升。我们还提高了同一类别中静态手部姿势图像的识别率。我们的工作通过集成深度学习特征和结合 SOM 进行 RBF 训练,推进了 DNN 的发展。
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