A Hierarchical Approach to Remote Sensing Scene Classification
Remote sensing scene classification deals with the problem of classifying land use/cover of a region from images. To predict the development and socioeconomic structures of cities, the status of land use in regions is tracked by the national mapping agencies of countries. Many of these agencies use...
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Zusammenfassung: | Remote sensing scene classification deals with the problem of classifying
land use/cover of a region from images. To predict the development and
socioeconomic structures of cities, the status of land use in regions is
tracked by the national mapping agencies of countries. Many of these agencies
use land-use types that are arranged in multiple levels. In this paper, we
examined the efficiency of a hierarchically designed Convolutional Neural
Network (CNN) based framework that is suitable for such arrangements. We use
the NWPU-RESISC45 dataset for our experiments and arranged this data set in a
two-level nested hierarchy. Each node in the designed hierarchy is trained
using DenseNet-121 architectures. We provide detailed empirical analysis to
compare the performances of this hierarchical scheme and its non-hierarchical
counterpart, together with the individual model performances. We also evaluated
the performance of the hierarchical structure statistically to validate the
presented empirical results. The results of our experiments show that although
individual classifiers for different sub-categories in the hierarchical scheme
perform considerably well, the accumulation of the classification errors in the
cascaded structure prevents its classification performance from exceeding that
of the non-hierarchical deep model |
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DOI: | 10.48550/arxiv.2103.15463 |