Abstract
The main objective of hyperspectral Image Classification is to group pixels into spectral classes, where each class having a unique label representing specific information in the image. The classification can be done using methods categorized as supervised and unsupervised. The contrast of hyperspectral images is degraded if there is any disturbance of the transmission medium. This disturbance degrades the quality of the image generated by the sensor, which effects the classification accuracy. In this paper, Genetic Algorithm (GA) is used for hyperspectral image analysis. The algorithm is used in contrast enhancement, dimensionality reduction, and classification. This dimensionality reduction will remove less informative bands, decrease storage space, computational load, and communication bandwidth. The experimental results show the improvement of accuracy in classifying Indian Pines and Pavia University datasets
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Subba Reddy, T., Harikiran, J., Sai Chandana, B. (2021). Multi-Objective Genetic Algorithm for Hyperspectral Image Analysis. In: Satapathy, S.C., Bhateja, V., Favorskaya, M.N., Adilakshmi, T. (eds) Smart Computing Techniques and Applications. Smart Innovation, Systems and Technologies, vol 225. Springer, Singapore. https://doi.org/10.1007/978-981-16-0878-0_61
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DOI: https://doi.org/10.1007/978-981-16-0878-0_61
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