This paper investigates segmentation of multispectral images using multiscale watershed transformation for land cover classification with SPOT 5 multispectral data. The multiscale gradient operator was computed separately for each band, and then resulting multiple gradient images were combined b,averaging of magnitude of the gradient components to create a single-value p-adient image. The gradient image was filtered to eliminate local minima. The watershed transformation was used for segmentation of the filtered gradient image. The results indicate that the use of multiscale gradients for watershed segmentation could overcome the over-segmentation effect and achieve more accurate segmentation result. The incorporation of contextual informat...
We use morphological image processing for classifying spatial patterns at the pixel level on binary ...
The present paper develops a general methodology for the morphological segmentation of hyperspectral...
Traditional, pixel-based classification is very often an useless tool for an automatic extraction of...
This paper investigates segmentation of multispectral images using multiscale watershed transformati...
Watershed transformation in mathematical morphology is a powerful morphological tool for image segme...
Image segmentation is a process frequently used in several different areas including Cartography. Fe...
In this study, classification of multispectral data with high resolution from urban areas by combini...
High-resolution multispectral remote sensing image provides both spectral and structural information...
Many studies have focused on performing variational-scale segmentation to represent various geograph...
High-resolution multispectral remote sensing image provides both spectral and structural information...
Abstract. One of the preliminary tasks in supervised classification of multispectral data is the seg...
International audienceThe paper presents a new segmentation and classification scheme to analyze hyp...
A new technique for the segmentation of single- and multiresolution (MR) remote sensing images is pr...
International audienceThe present paper develops a general methodology for the morphological segment...
This paper highlights a series of recent developments in morphological image processing that are of ...
We use morphological image processing for classifying spatial patterns at the pixel level on binary ...
The present paper develops a general methodology for the morphological segmentation of hyperspectral...
Traditional, pixel-based classification is very often an useless tool for an automatic extraction of...
This paper investigates segmentation of multispectral images using multiscale watershed transformati...
Watershed transformation in mathematical morphology is a powerful morphological tool for image segme...
Image segmentation is a process frequently used in several different areas including Cartography. Fe...
In this study, classification of multispectral data with high resolution from urban areas by combini...
High-resolution multispectral remote sensing image provides both spectral and structural information...
Many studies have focused on performing variational-scale segmentation to represent various geograph...
High-resolution multispectral remote sensing image provides both spectral and structural information...
Abstract. One of the preliminary tasks in supervised classification of multispectral data is the seg...
International audienceThe paper presents a new segmentation and classification scheme to analyze hyp...
A new technique for the segmentation of single- and multiresolution (MR) remote sensing images is pr...
International audienceThe present paper develops a general methodology for the morphological segment...
This paper highlights a series of recent developments in morphological image processing that are of ...
We use morphological image processing for classifying spatial patterns at the pixel level on binary ...
The present paper develops a general methodology for the morphological segmentation of hyperspectral...
Traditional, pixel-based classification is very often an useless tool for an automatic extraction of...