2024
DOI: 10.3390/electronics13040761
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Design of a Generic Dynamically Reconfigurable Convolutional Neural Network Accelerator with Optimal Balance

Haoran Tong,
Ke Han,
Si Han
et al.

Abstract: In many scenarios, edge devices perform computations for applications such as target detection and tracking, multimodal sensor fusion, low-light image enhancement, and image segmentation. There is an increasing trend of deploying and running multiple different network models on one hardware platform, but there is a lack of generic acceleration architectures that support standard convolution (CONV), depthwise separable CONV, and deconvolution (DeCONV) layers in such complex scenarios. In response, this paper pr… Show more

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