Accuracy assessment of crop classification in hyperspectral imagery using very deep convolutional neural networks


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Date

2020

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Other Conference Item

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no

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Abstract

We focus on a study in which crops in the hyperspectral imagery are classified using very deep convolutional neural networks. A case study is presented for the 125-band hyperspectral imagery of Stennis Space Center. It is shown that besides other phenomena in the image, the main crop texture of the image is identified and classified. The overall accuracy and k coefficient values for this method in this study are, respectively, 98.01 percent and 0.937. The comparison between the accuracy of the classification of this method with those of other conventional methods reveals that it is more accurate in crop classification in hyperspectral imagery.

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unpublished

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2nd International Congress on Science and Engineering

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Subject

Hyperspectral imagery; Classification; Very deep convolutional neural networks; Accuracy assessment

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09707 - Soja, Benedikt / Soja, Benedikt check_circle

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