Using Deep Learning To Extract Scenery Information In Real Time Spatiotemporal Compressed Sensing

2018 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS (ISCAS)(2018)

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摘要
One of the problems of real time compressed sensing system is the computational cost of the reconstruction algorithms. It is especially problematic for close loop sensory applications where the sensory parameters needs to be constantly adjust to adapt to a dynamic scene. Through a preliminary experiment with MNIST dataset, we showed that we can extract some scene information (object recognition, scene movement direction and speed) based on the compressed samples using a deep convolutional neural network. It achieves 100% percent accuracy in distinguishing moving velocity, 96.22% in recognizing the digit and 90.04% in detecting moving direction after the code images are re-centered. Even though the classification accuracy drops slightly compared to using original videos, the computational speed is two time faster than classification on videos directly. This method also eliminates the need for sparse reconstruction prior to classification.
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关键词
time compressed sensing system,computational cost,reconstruction algorithms,loop sensory applications,sensory parameters,dynamic scene,preliminary experiment,MNIST dataset,scene information,object recognition,scene movement direction,compressed samples,deep convolutional neural network,detecting moving direction,classification accuracy,computational speed,sparse reconstruction,deep learning,extract scenery information,time spatiotemporal compressed sensing
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