This research aims to develop a multispectral, object-oriented and statistically-based change detection method using SPOT-VEGETATION time series. The dataset consists in daily images spanning years 2000 to 2006 and covering Bornean forest ecosystems. Seasonal composites are processed and homogeneous objects are delineated through a multi-temporal segmentation procedure. Each object is defined by a signature describing its spectral behaviour during years to compare. Such signature is formed by reflectance values of analyzed composites and is statistically expressed allowing accounting for temporal correlations existing between and within time series. Each object is compared to an unchanged situation through a distance computation and a Chi-s...
Detecting and monitoring forest degradation in the tropics has implications for various fields of in...
Deforestation and forest degradation are proceeding rapidly in the lowland forests of Indonesian Bor...
Tropical environments present a unique challenge for optical time series analysis, primarily owing t...
Monitoring land cover over large areas on a yearly basis is challenging. The spatial and temporal co...
Tracking land cover changes using remotely-sensed data contributes to evaluating to what extent huma...
Tropical forests are being cleared at alarming rates. The release of the Landsat image archive repre...
Forest ecosystems have recently received worldwide attention due to their biological diversity and t...
Change detection based on satellite remote sensing relies on the comparison of multispectral reflect...
Forest monitoring requires more automated systems to analyse the large amount of remote sensing data...
An automatic method for land cover mapping and for detecting forest change has been designed for hig...
Abstract. It is well-known that forests play a vital role in maintaining biodiversity and the health...
A new method has been developed in order to automatically detect land cover changes in forested area...
UNESCO World Heritage sites including tropical forests require operational monitoring tools in and a...
In this research wok, three different techniques of change detection were used to detect changes in ...
The Indonesian islands of Sumatera and Kalimantan (the Indonesian part of the island of Borneo) are ...
Detecting and monitoring forest degradation in the tropics has implications for various fields of in...
Deforestation and forest degradation are proceeding rapidly in the lowland forests of Indonesian Bor...
Tropical environments present a unique challenge for optical time series analysis, primarily owing t...
Monitoring land cover over large areas on a yearly basis is challenging. The spatial and temporal co...
Tracking land cover changes using remotely-sensed data contributes to evaluating to what extent huma...
Tropical forests are being cleared at alarming rates. The release of the Landsat image archive repre...
Forest ecosystems have recently received worldwide attention due to their biological diversity and t...
Change detection based on satellite remote sensing relies on the comparison of multispectral reflect...
Forest monitoring requires more automated systems to analyse the large amount of remote sensing data...
An automatic method for land cover mapping and for detecting forest change has been designed for hig...
Abstract. It is well-known that forests play a vital role in maintaining biodiversity and the health...
A new method has been developed in order to automatically detect land cover changes in forested area...
UNESCO World Heritage sites including tropical forests require operational monitoring tools in and a...
In this research wok, three different techniques of change detection were used to detect changes in ...
The Indonesian islands of Sumatera and Kalimantan (the Indonesian part of the island of Borneo) are ...
Detecting and monitoring forest degradation in the tropics has implications for various fields of in...
Deforestation and forest degradation are proceeding rapidly in the lowland forests of Indonesian Bor...
Tropical environments present a unique challenge for optical time series analysis, primarily owing t...