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Optimizing Convolution Neural Network on the TI C6678 multicore DSP

机译:在TI C6678多核DSP上优化卷积神经网络

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Convolutional Neural Networks (CNNs) have become the most advanced algorithms for deep learning. They are widely used in image processing, object detection and automatic translation. As the demand for CNNs continues to increase, the platforms on which they are deployed continue to expand. As an excellent low-power, high-performance, embedded solution, Digital Signal Processor (DSP) is used frequently in many key areas. This paper attempts to deploy the CNN to Texas Instruments (TI)’s TMS320C6678 multi-core DSP and optimize the main operations (convolution) to accommodate the DSP structure. The efficiency of the improved convolution operation has increased by tens of times.
机译:卷积神经网络(CNN)已成为深度学习的最先进算法。它们广泛用于图像处理,目标检测和自动翻译。随着对CNN的需求不断增加,部署它们的平台也不断扩大。作为一种出色的低功耗,高性能嵌入式解决方案,数字信号处理器(DSP)经常在许多关键领域使用。本文试图将CNN部署到德州仪器(TI)的TMS320C6678多核DSP上,并优化主要操作(卷积)以适应DSP结构。改进的卷积运算的效率提高了数十倍。

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