Dominic Mathew

Work place: Department of Applied Electronics and Instrumentation, Rajagiri School of Engineering and Technology, Kochi, Kerala, India

E-mail: dominicmathew@rajagiritech.edu.in

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Biography

Prof. Dominic Mathew graduated from College of Engineering, Trivandrum, Kerala, India in Electrical Engineering and holds Post graduate degree in Power Electronics from CUSAT, Kerala. He has more than 23 years of industrial experience in the area of industrial automation and approximately 18 years of experience in academics. His areas of interest are in Industrial Automation, Signal Processing, Computer Vision and Artificial Intelligence. He has published around 34 papers related to these areas and is currently involved in teaching topics related to A.I. at the Rajagiri School of Engineering & Technology, Kakkanad, Kerala

Author Articles
Optimized Octave Convolution Network Model for Histopathological Image Classification

By Binet Rose Devassy Jobin K. Antony Dominic Mathew

DOI: https://doi.org/10.5815/ijisa.2025.06.07, Pub. Date: 8 Dec. 2025

Accurate histopathological image classification plays a crucial role in cancer detection and diagnosis. In automated cancer detection methods, extraction of histological features of malignant and benign tissues is a challenging task. This paper presents a modified approach on octave convolution to extract high and low-frequency features which help to provide a comprehensive representation of histopathological images. Proposed octave convolution model is used to perform histopathological image classification using three different optimization strategies. Firstly, an optimal alpha value of 0.5 is used to give equal importance to both high-frequency and low-frequency feature maps. This balanced approach ensures that the model effectively considers critical high-frequency features as well as low-frequency features of cancerous tissues. Secondly, high-frequency and low-frequency feature maps are extracted and down sampled into half the spatial dimension size to reduce the computational cost compared to standard CNN. Thirdly, training and validation was conducted using ReLU, PReLU, LeakyReLU, ELU, GELU and Swish activation functions. From the experiment, it was concluded that PReLU is the best activation function for capturing intricate patterns inherent in cancer-related histopathological images. Combining all these optimization strategies, the proposed method proved to provide a classification accuracy of 93% and also to reduce the computational cost by 50%. Performance validation against pre-trained models, CNN variants and vision transformer-based models has also been conducted, which proved superior performance of the proposed model. 

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