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Novel FPGA Implementation of Hand Sign Recognition System With SOM–Hebb Classifier

机译:SOM–Hebb分类器的手势识别系统的新型FPGA实现

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This paper proposes a hardware posture recognition system with a hybrid network. The hybrid network consists of self-organizing map (SOM) and Hebbian network. Feature vectors are extracted from input posture images, which are mapped to a lower dimensional map of neurons in the SOM. The Hebbian network is a single-layer feedforward neural network trained with a Hebbian learning algorithm to identify categories. The recognition algorithm is robust to the change in location of hand signs, but it is not immune to rotation or scaling. Its robustness to rotation and scaling was improved by adding perturbation to the training data for the SOM–Hebb classifier. In addition, neuron culling is proposed to improve performance. The whole system is implemented on a field-programmable gate array employing novel video processing architecture. The system was designed to recognize 24 American sign language hand signs, and its feasibility was verified through both simulations and experiments. The experimental results revealed that the system could accomplish recognition at a speed of 60 frames/s, while achieving an accuracy of 97.1%. Due to a novel hardware implementation, the circuit size of the proposed system is very small, which is highly suitable for embedded applications.
机译:本文提出了一种具有混合网络的硬件姿态识别系统。混合网络由自组织地图(SOM)和Hebbian网络组成。从输入的姿势图像中提取特征向量,将其映射到SOM中神经元的低维图。 Hebbian网络是经过Hebbian学习算法训练以识别类别的单层前馈神经网络。识别算法对于手势位置的变化具有鲁棒性,但不能不受旋转或缩放的影响。通过将扰动添加到SOM-Hebb分类器的训练数据中,可以提高其对旋转和缩放的鲁棒性。另外,提出了神经元剔除以提高性能。整个系统在采用新型视频处理架构的现场可编程门阵列上实现。该系统旨在识别24种美国手语手势,并且通过仿真和实验验证了其可行性。实验结果表明,该系统能够以60帧/秒的速度完成识别,同时达到97.1%的精度。由于采用了新颖的硬件实现,所提出系统的电路尺寸非常小,非常适合嵌入式应用。

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