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Assessing classification performance for sampled remote sensing data
Big data poses challenges for storage, management, processing, analysis and visualisation. One technique of handling big data
is the use of a representative sample of the data. This paper proposes a sampling algorithm which makes use of multivariate
stratification with the aim of obtaining a sample that best represents the population while minimising the number of images in the
sample. The proposed sampling algorithm performs effectively on a big spatial image dataset of crop types. The results are assessed
by measuring the number of images sampled and as well as matching the proportionality of the population crop percentages. The
samples obtained from the proposed algorithm are then used for land cover classification. An ensemble method called random
forest is trained on the samples and accuracy is assessed. Precision, recall and F1-scores per crop type are computed as well as the
overall accuracy. The random forest classifier performed best on the proposed sample with the least number of images. In addition,
the classifier performed better on the proposed sample than it did on a random sample as the proposed sample due to the more
informative data. This research develops an effective way of sampling big data for crop classification.
Description:
Article is part of an unpublished Mini Dissertation (MSc)--University of Pretoria 2022 : "Assessing classification performance for sampled remote sensing data" by Tshepiso Selaelo Rangongo.
URI: https://repository.up.ac.za/handle/2263/89449.
Paper is presented at ISPRS TC IV Mid-term Symposium “Spatial Information to Empower the Metaverse”, 22–25 October 2024, Fremantle, Perth, Australia.