Land Use Classification Using Multi-neighborhood LBPs

02/07/2019
by   Harjot Singh Parmar, et al.
0

In this paper we propose the use of multiple local binary patterns(LBPs) to effectively classify land use images. We use the UC Merced 21 class land use image dataset. Task is challenging for classification as the dataset contains intra class variability and inter class similarities. Our proposed method of using multi-neighborhood LBPs combined with nearest neighbor classifier is able to achieve an accuracy of 77.76 suitable suggestion are made for further improvements to classification accuracy.

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