Review of Rice Crop Identification and Classification using Hyper- Spectral Image Processing System

نویسندگان

  • Shwetank
  • Jain
چکیده

Digital image processing is collection of techniques for the manipulation of digital images by computer and its applications. This collection of methods in remote sensing is dominantly treated as Satellite Digital Image Processing (SDIP). A spaceborne Multispectral Image Processing System (MIPS) has been used since 1960 as a traditional satellite image processing system for data analysis and extraction of meaningful information from/in the earth surface. The MIPS system provides limited information due to the small number of spectral channels. Over the past two decades, advances in satellite imaginary system have made it possible for the collection of several hundred spectral bands for processing. This is commonly referred to as Hyperspectral Image Processing System (HIPS). This study details the differences between MISP and HISP; and focuses on the application of HIS for Rice crop-classification, plant growth, plant biophysical, biochemical, physiology properties in different spectral regions and their mapping.

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تاریخ انتشار 2010