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2022 | OriginalPaper | Buchkapitel

22. Channel Pruning and Quantization-Based Learning for Object Detection with Computing Source Limited Application

verfasst von : Fei Zhao, Huanyu Liu, Moufa Hu, Yingjie Deng

Erschienen in: Advances in Smart Vehicular Technology, Transportation, Communication and Applications

Verlag: Springer Singapore

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Abstract

With the rise of convolutional neural network (CNN) in the field of computer vision, more and more practical applications need to deploy CNN on mobile devices. However, due to the large amount of CNN computing operations and the large number of parameters, it is difficult to deploy on ordinary edge devices. The neural network model compression method has become a popular technology to reduce the computational cost and has attracted more and more attention. We specifically design a small target detection network for hardware platforms with limited computing resources, use pruning and quantization methods to compress, and demonstrate in VOC dataset and RSOD dataset on the actual hardware platform. Experiments show that the proposed method can maintain a fairly accurate rate while greatly speeding up the inference speed. The proposed model designed in this paper achieves 76.74% mAP on the VOC dataset, which is 4.76 times faster than the original model.

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Metadaten
Titel
Channel Pruning and Quantization-Based Learning for Object Detection with Computing Source Limited Application
verfasst von
Fei Zhao
Huanyu Liu
Moufa Hu
Yingjie Deng
Copyright-Jahr
2022
Verlag
Springer Singapore
DOI
https://doi.org/10.1007/978-981-16-4039-1_22

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