Litcius/Paper detail

A Precision-Scalable Energy-Efficient Convolutional Neural Network Accelerator

Wenjian Liu, Jun Lin, Zhongfeng Wang

2020IEEE Transactions on Circuits and Systems I Regular Papers44 citationsDOI

Abstract

Quantization is a promising technique to compress the size of Convolutional Neural Network (CNN) models. Recently, various precision-scalable designs have been presented to reduce the computational complexity in CNNs. However, most of them adopt straightforward calculation scheme to implement the CNN, which causes high bandwidth requirement and low hardware utilization efficiency. This paper proposes a new precision-scalable architecture which can fully reduce the computational complexity in CNN inference and meanwhile has a finely simplified calculation scheme. Based on the proposed scheme, a well-optimized multiplier called Compositional Processing Element (C-PE) is devised. Compared with the previous multipliers, the new C-PE requires less area and power. Furthermore, two levels of optimization are introduced to the design to relieve the bandwidth problem and increase the hardware utilization efficiency. Implemented under the TSMC 90nm CMOS technology, the whole design achieves 6-68.1 fps in various precisions on VGG16 benchmark and a 49.8TOPS/W energy efficiency at 500MHz when scaled to 28nm, which is much better than previous precision-scalable ones.

Topics & Concepts

Computer scienceScalabilityConvolutional neural networkBenchmark (surveying)Efficient energy useComputer engineeringCMOSComputational complexity theoryBandwidth (computing)Quantization (signal processing)Memory bandwidthMultiplier (economics)Standard cellElectronic engineeringAlgorithmComputer hardwareComputer architectureIntegrated circuitArtificial intelligenceEngineeringElectrical engineeringGeographyOperating systemComputer networkGeodesyDatabaseMacroeconomicsEconomicsAdvanced Neural Network ApplicationsCCD and CMOS Imaging SensorsBrain Tumor Detection and Classification