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2024 | OriginalPaper | Chapter

Deep Learning Models for Classification of Remotely Sensed Data of Sugarcane

Authors : Mansi Kambli, Bhakti Palkar

Published in: Advances in Data-Driven Computing and Intelligent Systems

Publisher: Springer Nature Singapore

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Abstract

This chapter delves into the use of deep learning models, specifically CNN, MobileNetV2, and VGG19, for classifying remotely sensed data of sugarcane crops. It begins by emphasizing the importance of agriculture, particularly sugarcane, in global food security and economic growth. The benefits of remote sensing data, including spectral, temporal, and spatial resolutions, are discussed. The chapter then explores the application of deep learning techniques, focusing on convolutional neural networks and their ability to extract complex features from images. The CaneSat dataset, comprising georeferenced images of sugarcane and non-sugar cane crops, serves as the foundation for model training and evaluation. The performance metrics of accuracy, precision, and recall are meticulously compared across the models, with CNN achieving the highest accuracy at 83.30%. The chapter concludes by highlighting the potential future directions, such as the use of larger datasets and hyperspectral imagery to enhance model accuracy. The findings underscore the promise of deep learning in revolutionizing agricultural practices through precise crop classification and monitoring.

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Metadata
Title
Deep Learning Models for Classification of Remotely Sensed Data of Sugarcane
Authors
Mansi Kambli
Bhakti Palkar
Copyright Year
2024
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-9521-9_1