2016
DOI: 10.1016/j.cageo.2015.11.001
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A batch sliding window method for local singularity mapping and its application for geochemical anomaly identification

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Cited by 41 publications
(11 citation statements)
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“…Given the disadvantages of traditional image temperature density segmentationneglect of the local variation in the spatial distribution of thermal environment, and empirical determination of the segmentation threshold by operatorsis likely to be time-intensive and results in uncertainty. Therefore, a sliding window method based on the multifractal theory, proposed originally by Li and Cheng, has been widely applied for geochemical anomaly identification . Similar to geochemical material accumulation, the complex thermal diffusion phenomena in a small space can be characterized using the multifractal model in remotely sensed images …”
Section: Materials and Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Given the disadvantages of traditional image temperature density segmentationneglect of the local variation in the spatial distribution of thermal environment, and empirical determination of the segmentation threshold by operatorsis likely to be time-intensive and results in uncertainty. Therefore, a sliding window method based on the multifractal theory, proposed originally by Li and Cheng, has been widely applied for geochemical anomaly identification . Similar to geochemical material accumulation, the complex thermal diffusion phenomena in a small space can be characterized using the multifractal model in remotely sensed images …”
Section: Materials and Methodsmentioning
confidence: 99%
“…As the square window slides from one position to another, the thermal anomaly index is calculated for every center pixel. According to associated studies, ,, the spatial distribution of the thermal anomaly index is often characterized by the fractal dimension k , which implies that in a two-dimensional raster map, if k ≈ 2, no thermal anomalies exist. If k < 2, a positive thermal anomaly (high temperature) is indicated, and if k > 2, a negative thermal anomaly is indicated (low temperature).…”
Section: Materials and Methodsmentioning
confidence: 99%
“…In practice, more details should be considered. First, the size of the window needs to ensure that there are enough samples in the window (Xiao et al, 2016), and that the values of the possible missing variables in the window are sufficiently similar so that they can be ignored (Koutsias et al, 2010;Zhang et al, 2018b). The local window size was finally determined as 201 cells × 201 cells, that is, 18 km × 18 km.…”
Section: Construction Of Similar Habitatmentioning
confidence: 99%
“…The selective search algorithm mainly uses a hierarchical clustering method to segment and get the candidate target areas. A more detailed description about the selective search algorithm is listed in references [23][24][25]. The candidate areas obtained using the selective search algorithm are sent to a convolution neural network for classification to determine their type.…”
Section: Target Segmentationmentioning
confidence: 99%