Crop Type Identification for Smallholding Farms: Analyzing Spatial,
Temporal and Spectral Resolutions in Satellite Imagery
- URL: http://arxiv.org/abs/2205.03104v1
- Date: Fri, 6 May 2022 09:37:38 GMT
- Title: Crop Type Identification for Smallholding Farms: Analyzing Spatial,
Temporal and Spectral Resolutions in Satellite Imagery
- Authors: Depanshu Sani, Sandeep Mahato, Parichya Sirohi, Saket Anand, Gaurav
Arora, Charu Chandra Devshali, T. Jayaraman
- Abstract summary: High spectral resolution in satellite imagery can improve prediction performance for low spatial and temporal resolutions.
The F1-score is increased by 7% when using multispectral data of MSTR images as compared to the best results obtained from HSTR images.
- Score: 2.624789041396596
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The integration of the modern Machine Learning (ML) models into remote
sensing and agriculture has expanded the scope of the application of satellite
images in the agriculture domain. In this paper, we present how the accuracy of
crop type identification improves as we move from
medium-spatiotemporal-resolution (MSTR) to high-spatiotemporal-resolution
(HSTR) satellite images. We further demonstrate that high spectral resolution
in satellite imagery can improve prediction performance for low spatial and
temporal resolutions (LSTR) images. The F1-score is increased by 7% when using
multispectral data of MSTR images as compared to the best results obtained from
HSTR images. Similarly, when crop season based time series of multispectral
data is used we observe an increase of 1.2% in the F1-score. The outcome
motivates further advancements in the field of synthetic band generation.
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