science_cases:gmap_science_case
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- | ====== Automatic detection and classification of mounds on Mars ====== | ||
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- | ===== Aim of the science case ===== | ||
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- | On Mars, mounds and cones can be formed through mud extrusion and periglacial processes such as freezing lenses of water (pingo). The mapping of large populations of mound features on imagery with convolutional neural networks (CNNs) and ML algorithms have already been proven to be effective. However, it has been demonstrated that morphometric parameters that can be derived by Digital Terrain Models (DTMs) help to distinguish such morphologies according to their origins. A definition of an ML pipeline able to detect and categorize large mound populations according to their topographic/ | ||
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- | With the ML tools developed for this sciene case, we want to identify the mound populations. Based on their topographic/ | ||
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science_cases/gmap_science_case.1604575115.txt.gz · Last modified: 2020/11/05 12:18 by admin