IEICE Transactions on Information and Systems
Online ISSN : 1745-1361
Print ISSN : 0916-8532
Special Section on Parallel and Distributed Computing and Networking
Dither NN: Hardware/Algorithm Co-Design for Accurate Quantized Neural Networks
Kota ANDOKodai UEYOSHIYuka OBAKazutoshi HIROSERyota UEMATSUTakumi KUDOMasayuki IKEBETetsuya ASAIShinya TAKAMAEDA-YAMAZAKIMasato MOTOMURA
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2019 年 E102.D 巻 12 号 p. 2341-2353

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Deep neural network (NN) has been widely accepted for enabling various AI applications, however, the limitation of computational and memory resources is a major problem on mobile devices. Quantized NN with a reduced bit precision is an effective solution, which relaxes the resource requirements, but the accuracy degradation due to its numerical approximation is another problem. We propose a novel quantized NN model employing the “dithering” technique to improve the accuracy with the minimal additional hardware requirement at the view point of the hardware-algorithm co-designing. Dithering distributes the quantization error occurring at each pixel (neuron) spatially so that the total information loss of the plane would be minimized. The experiment we conducted using the software-based accuracy evaluation and FPGA-based hardware resource estimation proved the effectiveness and efficiency of the concept of an NN model with dithering.

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© 2019 The Institute of Electronics, Information and Communication Engineers
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