Title
Sampling Strategy for Detailed Urban Land Use Classification: A Systematic Analysis in Shenzhen.
Abstract
A heavy workload is required for sample collection for urban land use classification, and researchers are in urgent need of sampling strategies as a guide to achieve more effective work. In this paper, we make use of an urban land use survey to obtain a complete sample set of a city, test the impact of different training and validation sample sizes on the accuracy, and summarize the sampling strategy. The following conclusions are drawn based on our systematic analysis in Shenzhen. (1) For the best classification accuracy, the number of training samples should be no less than 40% of the total number of parcels or no less than 5500 parcels. For the best labor cost performance, the number should be no less than 7% or no less than 900. (2) The accuracy evaluation is stable and reliable and requires validation sample numbers of no less than 10% of the total or no less than 1200. (3) Samples with a purity of 60-90% are preferred, and the classification effectiveness is better in samples with a purity greater than 90% under the same number. (4) If spatial equilibrium sampling cannot be carried out, sampling areas with complex land use patterns should be preferred.
Year
DOI
Venue
2020
10.3390/rs12091497
REMOTE SENSING
Keywords
DocType
Volume
land use classification,field survey,samples,parcel segmentation,machine learning,land use mapping
Journal
12
Issue
Citations 
PageRank 
9
1
0.36
References 
Authors
0
7
Name
Order
Citations
PageRank
Mo Su110.36
Renzhong Guo24111.41
Bin Chen331.76
Wuyang Hong431.07
Jiaqi Wang510.36
Yimei Feng610.36
Bin Xu713323.23