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Ocelli: Efficient Processing-in-Pixel Array Enabling Edge Inference of Ternary Neural Networks
2022
Journal of Low Power Electronics and Applications
Convolutional Neural Networks (CNNs), due to their recent successes, have gained lots of attention in various vision-based applications. They have proven to produce incredible results, especially on big data, that require high processing demands. However, CNN processing demands have limited their usage in embedded edge devices with constrained energy budgets and hardware. This paper proposes an efficient new architecture, namely Ocelli includes a ternary compute pixel (TCP) consisting of a
doi:10.3390/jlpea12040057
fatcat:zsfq27plgrd77a3xrodblqaptm