Hardware Acceleration of Computer Vision and Deep Learning Algorithms on the Edge using OpenCL

Published in EAI Endorsed Transactions on Cloud Systems, 2019

Recommended citation: Mishra, B. and Chakraborty, D. and Makkadayil, S. and Patil, S. D. and Nallani, B. (2019). "Hardware Acceleration of Computer Vision and Deep Learning Algorithms on the Edge using OpenCL; EAI Endorsed Transactions on Cloud Systems. vol 5. https://eudl.eu/pdf/10.4108/eai.5-11-2019.162597

The paper proposes a methodology that can be used to accelerate traditional as well as machine learning based computer vision algorithms.

Abstract:

Machine vision using CNN is a key application in Industrial automation environment, enabling real time as well as offline analytics. A lot of processing is required in real time, and in high speed environment variable latency of data transfer makes a cloud solution unreliable. There is a need for application specific hardware acceleration to process CNNs and traditional computer vision algorithms. Cost and time-to-market are critical factors in the fast moving Industrial automation segment which makes RTL based custom hardware accelerators infeasible. This work proposes a low-cost, scalable, compute-at-the-edge solution using FPGA and OpenCL. The paper proposes a methodology that can be used to accelerate traditional as well as machine learning based computer vision algorithms.