Harmonizing Cross View Image Transformation Through Local and Global Insights- A Review
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How to Cite

Sowmiya, T., M. Madhana Gopal, V. Marimuthu, and P. Santhosh. 2024. “Harmonizing Cross View Image Transformation Through Local and Global Insights- A Review”. Journal of Innovative Image Processing 6 (1): 1-15. https://doi.org/10.36548/jiip.2024.1.001.

Keywords

  • Extreme Learning Machine
  • electromagnetic spectrum
  • Hyperspectral
  • 2-Dimensional Discrete Wavelet Transform
  • Pixel information

Abstract

Hyperspectral and multispectral information processing systems and technologies have demonstrated their value in enhancing agricultural productivity and practices by providing farmers and crop managers with valuable information on factors influencing crop condition and growth. These technologies play a crucial role in various agricultural applications, such as crop management, crop yield forecasting, crop disease detection, and monitoring soil, water, and land usage. To enhance the process of agriculture through effective crop management and assistance to farmer, using an advanced image transformation techniques the study delves into the exploration of techniques for harmonizing cross-view image transformation, with a focus on integrating both local and global insights. Further the study proposes the application of the 2D-DWT (Two-Dimensional Discrete Wavelet Transform) technique for image data preprocessing and the Extreme Learning Machine (ELM) algorithm for image classification in the context of hyperspectral images. Hyperspectral information sensing allows for the coverage of the electromagnetic spectrum in a single acquisition with several hundred spectral bands, resulting in a data cube containing significant spectral and spatial information ELM is particularly effective for classification problems because of its quick training time and capacity to operate with hidden nodes whose parameters are randomly assigned rather than modified iteratively. This comprehensive review aims to provide valuable insights and a critical analysis of the suggested method, shedding light on its potential contributions to the advancement of image transformation techniques for agricultural development.

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