Donatella Rita Petretto

Dynamic Pruning for Parsimonious CNN Inference on Embedded Systems

Busia P.;Meloni P.
2022-01-01

Abstract

As a consequence of the current edge-processing trend, Convolutional Neural Networks (CNNs) deployment has spread to a rich landscape of devices, highlighting the need to reduce the algorithm’s complexity and exploit hardware-aided computing, as two prospective ways to improve performance on resource-constrained embedded systems. In this work, we refer to a compression method reducing a CNN computational workload based on the complexity of the data to be processed, by pruning unnecessary connections at runtime. To evaluate its efficiency when applied on edge processing platforms, we consider a keyword spotting (KWS) task executing on SensorTile, a low-power microcontroller platform by ST, and an image recognition task running on NEURAghe, an FPGA-based inference accelerator. In the first case, we obtained a 51% average reduction of the computing workload, resulting in up to 44% inference speedup, and 15% energy-saving, while in the latter, a 36% speedup is achieved, thanks to a 44% workload reduction. © 2022, Springer Nature Switzerland AG.
2022
Inglese
Design and Architecture for Signal and Image Processing 15th International Workshop, DASIP 2022, Budapest, Hungary, June 20–22, 2022, Proceedings
978-3-031-12747-2
978-3-031-12748-9
Springer
Karol Desnos, Sergio Pertuz
13425
45
56
12
15th International Workshop on Design and Architecture for Signal and Image Processing, DASIP 2022, held jointly with the 17th International Conference on High-Performance Embedded Architectures and Compilers, HiPEAC 2022
Esperti anonimi
20-22 June 2022
Budapest
internazionale
scientifica
Convolutional Neural Networks; Hardware acceleration; Pruning
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
Busia, P.; Theodorakopoulos, I.; Pothos, V.; Fragoulis, N.; Meloni, P.
273
5
4.1 Contributo in Atti di convegno
open
info:eu-repo/semantics/conferencePaper
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