Orientation and scale based weights initialization scheme for deep convolutional neural networks
Image classification is generally about the understanding of information in the images concerned. The more the system able to understand the image contains, the more effective it will be in classifying desired images. Recent work has shown that the convolutional neural network (CNN) paradigm is...
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2020
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my-ukm.journal.168392021-06-20T04:48:35Z http://journalarticle.ukm.my/16839/ Orientation and scale based weights initialization scheme for deep convolutional neural networks Azizi Abdullah, Wong, En Ting Image classification is generally about the understanding of information in the images concerned. The more the system able to understand the image contains, the more effective it will be in classifying desired images. Recent work has shown that the convolutional neural network (CNN) paradigm is useful for obtaining more accurate image classification results. A crucial component in the CNN is the convolution filters which consist of a series of predefined filter weight initialization values. The filter weights are then automatically learned by the neural network throughout the back- propagation training algorithm. However, most initialization schemes used in the deep convolutional neural networks are mainly to deal with vanishing gradient problems. Thus, selecting optimal weights are crucial to improve convergence and minimize the complexity which can enhance the generalization performance. One possible solution is to replace the standard weights with parameterized filters that proven to be efficient in extracting useful features such as Gabor filter bank. The Gabor filter bank is popular due to its ability in dealing with spatial transformation, especially on edges and texture information of different scales and directions. Thus, in this paper, we investigate the effect of utilizing Gabor and convolutional filters on small size kernels of deep VGG-16 architecture. The standard VGG-16 filter is replaced with the Gabor filter bank to obtain uniform distribution at all layers of the network. The result shows that the orientation and scale weights initialization scheme outperforms the standard filter weights on an image classification problem. Penerbit Universiti Kebangsaan Malaysia 2020-12 Article PeerReviewed application/pdf en http://journalarticle.ukm.my/16839/1/08.pdf Azizi Abdullah, and Wong, En Ting (2020) Orientation and scale based weights initialization scheme for deep convolutional neural networks. Asia-Pacific Journal of Information Technology and Multimedia, 9 (2). pp. 103-112. ISSN 2289-2192 https://www.ukm.my/apjitm/articles-year.php |
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Image classification is generally about the understanding of information in the images concerned. The more the
system able to understand the image contains, the more effective it will be in classifying desired images. Recent
work has shown that the convolutional neural network (CNN) paradigm is useful for obtaining more accurate
image classification results. A crucial component in the CNN is the convolution filters which consist of a series
of predefined filter weight initialization values. The filter weights are then automatically learned by the neural
network throughout the back- propagation training algorithm. However, most initialization schemes used in the
deep convolutional neural networks are mainly to deal with vanishing gradient problems. Thus, selecting optimal
weights are crucial to improve convergence and minimize the complexity which can enhance the generalization
performance. One possible solution is to replace the standard weights with parameterized filters that proven to be
efficient in extracting useful features such as Gabor filter bank. The Gabor filter bank is popular due to its ability
in dealing with spatial transformation, especially on edges and texture information of different scales and
directions. Thus, in this paper, we investigate the effect of utilizing Gabor and convolutional filters on small size
kernels of deep VGG-16 architecture. The standard VGG-16 filter is replaced with the Gabor filter bank to obtain
uniform distribution at all layers of the network. The result shows that the orientation and scale weights
initialization scheme outperforms the standard filter weights on an image classification problem. |
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Azizi Abdullah, Wong, En Ting |
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Azizi Abdullah, Wong, En Ting Orientation and scale based weights initialization scheme for deep convolutional neural networks |
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Azizi Abdullah, Wong, En Ting |
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Azizi Abdullah, |
title |
Orientation and scale based weights initialization scheme for deep convolutional neural networks |
title_short |
Orientation and scale based weights initialization scheme for deep convolutional neural networks |
title_full |
Orientation and scale based weights initialization scheme for deep convolutional neural networks |
title_fullStr |
Orientation and scale based weights initialization scheme for deep convolutional neural networks |
title_full_unstemmed |
Orientation and scale based weights initialization scheme for deep convolutional neural networks |
title_sort |
orientation and scale based weights initialization scheme for deep convolutional neural networks |
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Penerbit Universiti Kebangsaan Malaysia |
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2020 |
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http://journalarticle.ukm.my/16839/1/08.pdf http://journalarticle.ukm.my/16839/ https://www.ukm.my/apjitm/articles-year.php |
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