基于近似压缩器和乘法器的高效人工神经网络设计

Kattekola Naresh, S. Majumdar, Y. Sai, P. R. Sai
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引用次数: 1

摘要

如今,人工神经网络(ann)在图像处理、人脸识别和语义分割等各个研究领域的多种应用和方法取得了令人印象深刻的成果。在这里,重点是尽量减少人工神经网络硬件的复杂性,以保持准确性为主要关注点。人工神经网络是一个近似的子系统,在机器学习中,它训练神经元根据目标值获得相关输出。通过使用这种人工神经网络,可以实现近似算术电路之间的接口。3:2, 4:2压缩机设计具有独特的误差位置,通常在5%至25%之间提供更好的功率面积和延迟约束。所设计的近似人工神经网络在3% ~ 30%的范围内获得了设计约束。仿真结果采用synopsys设计编译器在90nm工艺下完成。
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Efficient Design of Artificial Neural Networks using Approximate Compressors and Multipliers
Nowadays, Artificial Neural Networks (ANNs) secured impressive results with multiple applications and approaches in various research fields, as well as image processing, face recognition and semantic segmentation. Here, the focus is to minimize the complexity of ANN hardware in keeping accuracy as a major concern. ANN is a subsystem that is approximate, in machine learning where it trains the neurons to get the relevant output according to the target value. By using this ANN, interfacing can be possible between approximate arithmetic circuits. 3:2, 4:2 compressors are designed with unique error positions, usually gives better power area and delay constraints in between 5 to 25%. The designed approximate ANN gains the design constraints in the range of 3 to 30%. The simulation results were done by using synopsys design compiler at 90nm Technology.
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