Data from an IKONOS image acquired over Dallas was used to demonstrate the use of an operational wavelet-based algorithm to examine the performance of different texture measures and window sizes at various resolutions in connection to characteristic scales. It was found that a 63x63 window was the optimal window size, and energy measure produced the highest accuracy. Results from this study suggest that the choice of window size in wavelet-based classification affects the accuracy. Larger window sizes significantly improve the overall accuracy when using homogeneous samples. In the real-world situation, a larger window may not necessarily produce higher accuracy since a larger window tends to cover more land-use and land-cover classes and t...
Abstract Three different training strategies often used for supervised classification-single pixel, ...
An empirical study of texture analysis for feature extraction and classification of high spatial res...
Objective comparison of classification performance of earth observation images, acquired at differen...
Attempts to analyze urban features and classify land use and land cover directly from high-resolutio...
Understanding the spatial structure of fine spatial resolution images is instrumental for either pix...
The extraction of texture features from high resolution remote sensing imagery provides a complement...
This thesis is a theoretical and empirical examination of the relationship between texture and scale...
The extraction of numeric features to characterize textures on images takes special relevance in cer...
It is now well admitted in the computer vision literature that a multi-resolution decomposition prov...
ABSTRACT. This paper presents a series of experiments on classification of remotely sensed images, t...
In this study we addressed fundamental characteristics of image analysis in remote sensing, enumerat...
Texture provides spatial features complementary to spectral information in land cover classification...
The graphics community initially developed multi-resolution representations of surfaces in order to ...
With the development of Geographical Information System (GIS) and remote sensing techniques, a grea...
In this article we investigate the scale dependence of spatial heterogeneity in multiresolution and ...
Abstract Three different training strategies often used for supervised classification-single pixel, ...
An empirical study of texture analysis for feature extraction and classification of high spatial res...
Objective comparison of classification performance of earth observation images, acquired at differen...
Attempts to analyze urban features and classify land use and land cover directly from high-resolutio...
Understanding the spatial structure of fine spatial resolution images is instrumental for either pix...
The extraction of texture features from high resolution remote sensing imagery provides a complement...
This thesis is a theoretical and empirical examination of the relationship between texture and scale...
The extraction of numeric features to characterize textures on images takes special relevance in cer...
It is now well admitted in the computer vision literature that a multi-resolution decomposition prov...
ABSTRACT. This paper presents a series of experiments on classification of remotely sensed images, t...
In this study we addressed fundamental characteristics of image analysis in remote sensing, enumerat...
Texture provides spatial features complementary to spectral information in land cover classification...
The graphics community initially developed multi-resolution representations of surfaces in order to ...
With the development of Geographical Information System (GIS) and remote sensing techniques, a grea...
In this article we investigate the scale dependence of spatial heterogeneity in multiresolution and ...
Abstract Three different training strategies often used for supervised classification-single pixel, ...
An empirical study of texture analysis for feature extraction and classification of high spatial res...
Objective comparison of classification performance of earth observation images, acquired at differen...