RingCNN: Exploiting Algebraically-Sparse Ring Tensors for Energy-Efficient CNN-Based Computational Imaging
Chao-Tsung Huang

TL;DR
This paper introduces RingCNN, a novel algebraic sparsity-based approach using ring algebra for energy-efficient CNN acceleration in computational imaging, achieving significant efficiency gains with maintained image quality.
Contribution
It proposes a new ring algebra framework for CNNs that reduces weights and complexity, along with an accelerator implementation demonstrating substantial energy and area efficiency improvements.
Findings
Achieves 2.00x energy efficiency with n=2
Attains 3.84x energy efficiency with n=4
Maintains comparable image quality to real-valued CNNs
Abstract
In the era of artificial intelligence, convolutional neural networks (CNNs) are emerging as a powerful technique for computational imaging. They have shown superior quality for reconstructing fine textures from badly-distorted images and have potential to bring next-generation cameras and displays to our daily life. However, CNNs demand intensive computing power for generating high-resolution videos and defy conventional sparsity techniques when rendering dense details. Therefore, finding new possibilities in regular sparsity is crucial to enable large-scale deployment of CNN-based computational imaging. In this paper, we consider a fundamental but yet well-explored approach -- algebraic sparsity -- for energy-efficient CNN acceleration. We propose to build CNN models based on ring algebra that defines multiplication, addition, and non-linearity for n-tuples properly. Then the…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Advanced Vision and Imaging
MethodsConvolution
