AbstractTo verify a method of choosing the optimal segmentation scale, the Guangzhou Higher Education Mega Center is selected as test area for surface features extraction. Buildings, roads, waters and vegetations are extracted from 4 different resolution images using different scales. It is found that the optimal segmentation scale selected based on standard deviation of the means and mean of standard deviations of image objects’ brightness is almost consistent with the optimal segmentation scale selected based on actual classification. The classification accuracy is related with spatial resolution. But for specific applications, higher resolution doesn’t definitely get better classification accuracy
High-resolution remotely sensed data have been actively employed in urban land use/cover. Object-ori...
<p>a-c: The relationships between shape factor of each segmentation scale and ASEI. d-f: The relatio...
In the application of machine learning to geographic object based image analysis, several parameters...
AbstractTo verify a method of choosing the optimal segmentation scale, the Guangzhou Higher Educatio...
Aiming at the optimal segmentation scale selection for object-oriented remote sensing image classifi...
High-spatial-resolution images play an important role in land cover classification, and object-based...
Lately, with progresses in remote sensing information techniques and the growingly and unprecedented...
The urban green cover in high-spatial resolution (HR) remote sensing images have obvious multiscale ...
Abstract—The importance of scale issues is described in this paper. It also expounds the situation o...
Image segmentation is a preliminary and critical step in object-based image classification. Its prop...
Multi-scale/multi-level geographic object-based image analysis (MS-GEOBIA) methods are becoming wide...
In order to adapt different scale land cover segmentation, an optimized approach under the guidance ...
Object oriented analysis is widely used in interpretation of remote sensing images in comparison wit...
Abstract. Land use mapping is one of the major applications of remote sensing. While most studies fo...
The traditional remote sensing image segmentation method uses the same set of parameters for the ent...
High-resolution remotely sensed data have been actively employed in urban land use/cover. Object-ori...
<p>a-c: The relationships between shape factor of each segmentation scale and ASEI. d-f: The relatio...
In the application of machine learning to geographic object based image analysis, several parameters...
AbstractTo verify a method of choosing the optimal segmentation scale, the Guangzhou Higher Educatio...
Aiming at the optimal segmentation scale selection for object-oriented remote sensing image classifi...
High-spatial-resolution images play an important role in land cover classification, and object-based...
Lately, with progresses in remote sensing information techniques and the growingly and unprecedented...
The urban green cover in high-spatial resolution (HR) remote sensing images have obvious multiscale ...
Abstract—The importance of scale issues is described in this paper. It also expounds the situation o...
Image segmentation is a preliminary and critical step in object-based image classification. Its prop...
Multi-scale/multi-level geographic object-based image analysis (MS-GEOBIA) methods are becoming wide...
In order to adapt different scale land cover segmentation, an optimized approach under the guidance ...
Object oriented analysis is widely used in interpretation of remote sensing images in comparison wit...
Abstract. Land use mapping is one of the major applications of remote sensing. While most studies fo...
The traditional remote sensing image segmentation method uses the same set of parameters for the ent...
High-resolution remotely sensed data have been actively employed in urban land use/cover. Object-ori...
<p>a-c: The relationships between shape factor of each segmentation scale and ASEI. d-f: The relatio...
In the application of machine learning to geographic object based image analysis, several parameters...