1. Exploration of Semantic Geo-Object Recognition Based on the Scale Parameter Optimization Method for Remote Sensing Images
- Author
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Qingwen Qi, Yongji Wang, Lili Jiang, and Jun Wang
- Subjects
010504 meteorology & atmospheric sciences ,Scale (ratio) ,Computer science ,Geography, Planning and Development ,0211 other engineering and technologies ,02 engineering and technology ,Interval (mathematics) ,01 natural sciences ,Set (abstract data type) ,Earth and Planetary Sciences (miscellaneous) ,parameter optimization ,Segmentation ,Computers in Earth Sciences ,image segmentation ,021101 geological & geomatics engineering ,0105 earth and related environmental sciences ,Geography (General) ,GEOBIA ,business.industry ,Gaofen-1 images ,Cognitive neuroscience of visual object recognition ,Pattern recognition ,Image segmentation ,semantic geo-object ,Identification (information) ,G1-922 ,Artificial intelligence ,business ,Scale parameter - Abstract
Image segmentation is of significance because it can provide objects that are the minimum analysis units for geographic object-based image analysis (GEOBIA). Most segmentation methods usually set parameters to identify geo-objects, and different parameter settings lead to different segmentation results, thus, parameter optimization is critical to obtain satisfactory segmentation results. Currently, many parameter optimization methods have been developed and successfully applied to the identification of single geo-objects. However, few studies have focused on the recognition of the union of different types of geo-objects (semantic geo-objects), such as a park. The recognition of semantic geo-objects is likely more crucial than that of single geo-objects because the former type of recognition is more correlated with the human perception. This paper proposes an approach to recognize semantic geo-objects. The key concept is that a single geo-object is the smallest component unit of a semantic geo-object, and semantic geo-objects are recognized by iteratively merging single geo-objects. Thus, the optimal scale of the semantic geo-objects is determined by iteratively recognizing the optimal scales of single geo-objects and using them as the initiation point of the reset scale parameter optimization interval. In this paper, we adopt the multiresolution segmentation (MRS) method to segment Gaofen-1 images and tested three scale parameter optimization methods to validate the proposed approach. The results show that the proposed approach can determine the scale parameters, which can produce semantic geo-objects.
- Published
- 2021