Abhinav Chandra

Work place: Dr Vishwanath Karad MIT World Peace University, Pune, India

E-mail: ethicallyabhinav@gmail.com

Website: https://orcid.org 0009-0007-3456-4479

Research Interests:

Biography

Abhinav Chandra is a final year undergraduate student pursuing his major in Bachelor of Technology from Dr. Vishwanath Karad MIT World Peace University with a concentration in Electronics and Communication Engineering and a focus in Machine Learning and AI. He has an expertise in data science with a focus on deep learning, machine learning, and image processing. He enjoys identifying patterns, deciphering their meaning, connecting them, and using his intuition in this way, so that he can write a beautiful story with his data that goes from the beginning to creating an excellent market insight. The author also addresses himself as an enthusiast who enjoys working on issues involving business and quantitative analytics. He is a challenging artificial intelligence and machine learning engineer looking to deliver cutting-edge projects with a Transformers theme.

Author Articles
Semantic Segmentation of Multispectral Satellite Images Using Residual Convolutional Networks

By Abhinav Chandra Anuradha Chetan Phadke Vaidehi Deshmukh

DOI: https://doi.org/10.5815/ijigsp.2026.02.02, Pub. Date: 8 Apr. 2026

Satellite imagery is always used to study spatial geographies to find water, residential, farmland, and forest lands; which can be further used for township development and planning, landscape detection etc. Semantic segmentation and image classification are the two crucial procedures in determining the spatial geographies. In order to improve the generalization ability of semantic segmentation algorithms, a combined model of UNet_ResNet is used in this paper. The engineered model is a type of Convolutional Neural Networks using GeoGANs which detects semantic patches in neural networks with smaller sizes and regional characteristics within a certain spatial and pixel scale. However, it faces a semantic segmentation challenge of identifying roadways in metropolitan areas. The model shows an accuracy score from 93% to 97.3% for image classification and segmentation purposes which fares better than the implementation of various existing architectures.

[...] Read more.
Other Articles