2024
DOI: 10.54254/2755-2721/62/20240406
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A hardware-implemented neural network for the analysis of handwritten numerals

Zhuotong Li

Abstract: This study presents a specialized hardware-accelerated neural network tailored for the recognition of handwritten digits in 28x28 pixel grayscale images. Employing the perceptron model, our single-layer neural network is composed of 10 neurons, each handling inputs from all pixels to generate an output. The digit recognition is determined by the neuron with the highest output value. Implemented in synthesizable Verilog, the design complies with a constraint of 350 multipliers. To achieve this, this paper emplo… Show more

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