位置感知快速神经网络(LFNN):一种基于位置感知的实时视频查询神经网络加速框架

Xiaotian Ma, Jiaqi Tang, Y. Bai
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摘要

随着深度神经网络不断推进计算机版任务,学术界和工业界的研究人员都在致力于开发强大的深度神经网络模型来处理大量数据。随着深度神经网络模型规模的增加,其推理过程的计算成本很高,限制了深度神经网络在实时应用中的应用。作为回应,我们提出了位置感知快速神经网络(LFNN),这是一个通过位置感知加速视频查询过程的通用框架,将DNN在视频评估中的成本降低了三倍,从而节省了三倍的推理时间。LFNN框架可以从给定的输入视频中通过定义的局部性自动感知两个输入帧之间的相似性。LFNN框架使我们能够在专门的处理方法中处理输入视频,这种处理方法的计算成本远低于对每帧进行检测的传统DNN推理。在跨帧突出显示的时间局部性信息中,Yolov5算法可以加速两到三倍。实验结果表明,所提出的LFNN易于在FPGA板上实现,并且可以忽略额外的硬件成本。
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Locality-sensing Fast Neural Network (LFNN): An Efficient Neural Network Acceleration Framework via Locality Sensing for Real-time Videos Queries
As deep neural networks have continuously advanced computer version tasks, researchers from academia and industry focus on developing a powerful deep neural network model to process volumes of data. With the increasing size of DNN models, their inference process is computationally expensive and limits the employment of DNNs in real-time applications.In response, we present the proposed Locality-sensing Fast Neural Network (LFNN), a generalized framework for accelerating the querying videos process via locality sensing to reduce the cost of DNN in video evaluation by three times saving in inference time. The LFNN framework can automatically sense the similarity between two input frames via a defined locality from a given input video. The LFNN framework enables us to process the input videos within the specialized processing method that is far less computationally expensive than conventional DNN inference that conducts detection for each frame. Within the highlighted temporal locality information across frames, the Yolov5 algorithm can be accelerated by two to three times. Experimental results show that the proposed LFNN is easily implemented on the FPGA board with neglectable extra hardware costs.
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