ZipNet: ZFNet-level accuracy with 48× fewer parameters
With the introduction of Convolutional Neural Networks, models for image classification achieve higher classification accuracy. Based on the pattern of the design of CNN architectures, increasing the number of layers equates to a higher classification accuracy, but also increases the number of param...
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oai:animorepository.dlsu.edu.ph:faculty_research-40232022-11-16T02:38:21Z ZipNet: ZFNet-level accuracy with 48× fewer parameters Antioquia, Arren Matthew C. Tan, Daniel Stanley Azcarraga, Arnulfo P. Cheng, Wen Huang Hua, Kai Lung With the introduction of Convolutional Neural Networks, models for image classification achieve higher classification accuracy. Based on the pattern of the design of CNN architectures, increasing the number of layers equates to a higher classification accuracy, but also increases the number of parameters and model size. This negatively affects the model training time, processing time, and memory requirement. We develop ZipNet, a CNN architecture with a higher classification accuracy than ZFNet, the winner of ILSVRC 2013, but with 48.5× smaller model size and 48.7× fewer parameters. The classification accuracy of ZipNet is higher than the performance of ZFNet and SqueezeNet on all configurations of the Caltech-256 dataset with varying number of training examples. © 2018 IEEE. 2018-07-02T07:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/3024 Faculty Research Work Animo Repository Neural networks (Computer science) Image converters Visual communication Computer Sciences |
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Neural networks (Computer science) Image converters Visual communication Computer Sciences Antioquia, Arren Matthew C. Tan, Daniel Stanley Azcarraga, Arnulfo P. Cheng, Wen Huang Hua, Kai Lung ZipNet: ZFNet-level accuracy with 48× fewer parameters |
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With the introduction of Convolutional Neural Networks, models for image classification achieve higher classification accuracy. Based on the pattern of the design of CNN architectures, increasing the number of layers equates to a higher classification accuracy, but also increases the number of parameters and model size. This negatively affects the model training time, processing time, and memory requirement. We develop ZipNet, a CNN architecture with a higher classification accuracy than ZFNet, the winner of ILSVRC 2013, but with 48.5× smaller model size and 48.7× fewer parameters. The classification accuracy of ZipNet is higher than the performance of ZFNet and SqueezeNet on all configurations of the Caltech-256 dataset with varying number of training examples. © 2018 IEEE. |
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author |
Antioquia, Arren Matthew C. Tan, Daniel Stanley Azcarraga, Arnulfo P. Cheng, Wen Huang Hua, Kai Lung |
author_facet |
Antioquia, Arren Matthew C. Tan, Daniel Stanley Azcarraga, Arnulfo P. Cheng, Wen Huang Hua, Kai Lung |
author_sort |
Antioquia, Arren Matthew C. |
title |
ZipNet: ZFNet-level accuracy with 48× fewer parameters |
title_short |
ZipNet: ZFNet-level accuracy with 48× fewer parameters |
title_full |
ZipNet: ZFNet-level accuracy with 48× fewer parameters |
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ZipNet: ZFNet-level accuracy with 48× fewer parameters |
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ZipNet: ZFNet-level accuracy with 48× fewer parameters |
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zipnet: zfnet-level accuracy with 48× fewer parameters |
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Animo Repository |
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2018 |
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https://animorepository.dlsu.edu.ph/faculty_research/3024 |
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