Comparative Study of CNN and QCNN for Image Recognition in Heterogeneous Image Processing

Rashmita Routray*, Abhishek Ray**
*-** Department of Instrumentation and Electronics Engineering, College of Engineering and Technology, Bhubaneswar, Odisha, India.
Periodicity:January - March'2021
DOI : https://doi.org/10.26634/jip.8.1.18081

Abstract

Image recognition has many applications today, and is being done by using various methods and technologies. Neural networks are now popularly used for various image processing applications. QCNN (Quaternion Convolutional Neural Networks) and CNN (Convolutional Neural Networks) are two methods that can be used for image recognition. In this paper, we compare performance of QCNN and CNN in colour image recognition. It shows that QCNN can easily capture the inter pixel relations producing better RGB images whereas CNN produces worst gray scale images.

Keywords

QCNN, CNN, Image Recognition, Heterogeneous Image Processing.

How to Cite this Article?

Routray, R, and Ray, A. (2021). Comparative Study of CNN and QCNN for Image Recognition in Heterogeneous Image Processing. i-manager's Journal on Image Processing, 8(1), 25-35. https://doi.org/10.26634/jip.8.1.18081

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