Loading [a11y]/accessibility-menu.js
Column Row Convolutional Neural Network: Reducing Parameters for Efficient Image Processing | MIT Press Journals & Magazine | IEEE Xplore

Column Row Convolutional Neural Network: Reducing Parameters for Efficient Image Processing


Abstract:

Recent advancements in deep learning have achieved significant progress by increasing the number of parameters in a given model. However, this comes at the cost of comput...Show More

Abstract:

Recent advancements in deep learning have achieved significant progress by increasing the number of parameters in a given model. However, this comes at the cost of computing resources, prompting researchers to explore model compression techniques that reduce the number of parameters while maintaining or even improving performance. Convolutional neural networks (CNN) have been recognized as more efficient and effective than fully connected (FC) networks. We propose a column row convolutional neural network (CRCNN) in this letter that applies 1D convolution to image data, significantly reducing the number of learning parameters and operational steps. The CRCNN uses column and row local receptive fields to perform data abstraction, concatenating each direction's feature before connecting it to an FC layer. Experimental results demonstrate that the CRCNN maintains comparable accuracy while reducing the number of parameters and compared to prior work. Moreover, the CRCNN is employed for one-class anomaly detection, demonstrating its feasibility for various applications.
Published in: Neural Computation ( Volume: 36, Issue: 4, 21 March 2024)
Page(s): 744 - 758
Date of Publication: 21 March 2024
Print ISSN: 0899-7667

Contact IEEE to Subscribe