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Comparison of Single Channel Indices for U-Net Based Segmentation of Vegetation in Satellite Images

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2020

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Spie-int Soc Optical Engineering

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Abstract

Hyper-spectral satellite imagery, consisting of multiple visible or infrared bands, is extremely dense and weighty for deep operations. Regarding problems related to vegetation as, more specifically, tree segmentation, it is difficult to train deep architectures due to lack of large-scale satellite imagery. In this paper, we compare the success of different single channel indices, which are constructed from multiple bands, for the purpose of tree segmentation in a deep convolutional neural network ( CNN) architecture. The utilized indices are either hand-crafted such as excess green index (ExG) and normalized difference vegetation index (NDVI) or reconstructed from the visible bands using feature space transformation methods such as principle component analysis (PCA). For comparison, these features are fed to an identical CNN architecture, which is a standard U-Net-based symmetric encoder-decoder design with hierarchical skip connections and the segmentation success for each single index is recorded. Experimental results show that single bands, which are constructed from the vegetation indices and space transformations, can achieve similar segmentation performances as compared to that of the original multi-channel case.

Description

Akagunduz, Erdem/0000-0002-0792-7306

Keywords

Hyper-Spectral Imagery, Vegetation Segmentation, Deep Convolutional Neural Networks

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Citation

Ülkü, İrem...at all (2020). "Comparison of single channel indices for U-Net based segmentation of vegetation in satellite images", Twelfth International Conference on Machine Vision, 2019, Amsterdam, Netherlands (ICMV2019).

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5

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12th International Conference on Machine Vision (ICMV) -- NOV 16-18, 2019 -- Amsterdam, NETHERLANDS

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11433

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Scopus : 7

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7

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5

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3

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