嵌入式GPU超分辨率处理的高性能加速器

W. Zhao, Qi Sun, Yang Bai, Wenbo Li, Haisheng Zheng, Bei Yu, Martin D. F. Wong
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引用次数: 1

摘要

近年来,超分辨率(SR)处理技术取得了令人瞩目的进展。然而,它的实时推理要求不仅对模型设计提出了挑战,而且对片上实现也提出了挑战。在本文中,我们在嵌入式GPU设备上实现了一个全栈SR加速框架。详细分析了SR模型中使用的特殊字典学习算法,并通过一种新的字典选择策略进行了加速。分析了硬件编程体系结构和模型结构,指导计算核的优化设计,使资源约束下的推理延迟最小化。这些新技术很好地解决了基于深度字典学习的SR模型的通信和计算瓶颈。在边缘嵌入式NVIDIA NX和2080Ti上的实验表明,我们的方法明显优于最先进的NVIDIA TensorRT,可以实现实时性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A High-Performance Accelerator for Super-Resolution Processing on Embedded GPU
Recent years have witnessed impressive progress in super-resolution (SR) processing. However, its real-time inference requirement sets a challenge not only for the model design but also for the on-chip implementation. In this paper, we implement a full-stack SR acceleration framework on embedded GPU devices. The special dictionary learning algorithm used in SR models was analyzed in detail and accelerated via a novel dictionary selective strategy. Besides, the hardware programming architecture together with the model structure is analyzed to guide the optimal design of computation kernels to minimize the inference latency under the resource constraints. With these novel techniques, the communication and computation bottlenecks in the deep dictionary learning-based SR models are tackled perfectly. The experiments on the edge embedded NVIDIA NX and 2080Ti show that our method outperforms the state-of-the-art NVIDIA TensorRT significantly and can achieve real-time performance.
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