Work place: Ramrao Adik Institute of Technology, Department of Information Technology, Navi Mumbai, 400706, India
E-mail: ameykulkarni18571@gmail.com
Website: https://orcid.org/0009-0001-7162-0376
Research Interests:
Biography
Amey Kulkarni completed his Bachelor of Technology in Information Technology from Ramrao Adik Institute of Technology (RAIT), Navi Mumbai, India, in 2025, graduating among the top five students in his department. During his undergraduate studies, he secured a copyright for a project focused on developing a hybrid chatbot system. He subsequently completed an Analyst Internship at KPMG India, gaining hands-on experience in finance through data-driven analysis and decision-support workflows. After completing his undergraduate degree, he undertook a winter research internship in artificial intelligence in collaboration with a veterinary institute in Bengaluru. As part of this work, he contributed to the development of one of the earliest AI-based models in veterinary parasitology, representing a novel application of AI in this domain. He is currently an active AI researcher with interests in artificial intelligence, machine learning, deep learning, image processing, and computer vision.
By Amey Kulkarni Sejal Pathrabe Hans Gupta Gajanan K. Birajdar Sangita Chaudhari
DOI: https://doi.org/10.5815/ijigsp.2026.02.12, Pub. Date: 8 Apr. 2026
Classifying and predicting banana shelf life is vital for optimizing storage and distribution in agriculture. Traditional methods, relying on subjective visual inspection, are inconsistent and time-intensive. This study presents a new, non-destructive approach combining thermal imaging, and machine learning to classify naturally ripened and artificially ripened bananas and forecast their shelf life. Preprocessed thermal images are flattened, segmented into fixed-size patches, and then linearly projected into feature tokens. Position embeddings are incorporated to retain spatial information, and the sequence is processed by a Vision Transformer (ViT) encoder, which leverages self-attention mechanisms to model relationships between patches. The [CLS] token output is subsequently processed through fully connected layers for final classification, achieving 97.59% accuracy. Validation using t-SNE visualization demonstrated clear class separability, and receiver operating characteristic (ROC) curves confirmed robust performance. With an MSE of 0.10, MAE of 0.18, and R2 score of 0.85, the random forest algorithm performed exceptionally well at predicting the shelf life of artificially ripened bananas. This approach offers significant advantages, including improved accuracy, reduced subjectivity, and efficiency in data processing. By integrating thermal imaging with advanced models, the proposed method enhances agricultural supply chain management and promotes precision in ripening classification and shelf life prediction.
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