Matches in SemOpenAlex for { <https://semopenalex.org/work/W4282958666> ?p ?o ?g. }
- W4282958666 endingPage "248" @default.
- W4282958666 startingPage "248" @default.
- W4282958666 abstract "Data analysis methods have scarcely kept pace with the rapid increase in Earth observations, spurring the development of novel algorithms, storage methods, and computational techniques. For scientists interested in Mars, the problem is always the same: there is simultaneously never enough of the right data and an overwhelming amount of data in total. Finding sufficient data needles in a haystack to test a hypothesis requires hours of manual data screening, and more needles and hay are added constantly. To date, the vast majority of Martian research has been focused on either one-off local/regional studies or on hugely time-consuming manual global studies. Machine learning in its numerous forms can be helpful for future such work. Machine learning has the potential to help map and classify a large variety of both features and properties on the surface of Mars and to aid in the planning and execution of future missions. Here, we outline the current extent of machine learning as applied to Mars, summarize why machine learning should be an important tool for planetary geomorphology in particular, and suggest numerous research avenues and funding priorities for future efforts. We conclude that: (1) moving toward methods that require less human input (i.e., self- or semi-supervised) is an important paradigm shift for Martian applications, (2) new robust methods using generative adversarial networks to generate synthetic high-resolution digital terrain models represent an exciting new avenue for Martian geomorphologists, (3) more effort and money must be directed toward developing standardized datasets and benchmark tests, and (4) the community needs a large-scale, generalized, and programmatically accessible geographic information system (GIS)." @default.
- W4282958666 created "2022-06-17" @default.
- W4282958666 creator A5050238446 @default.
- W4282958666 creator A5073504754 @default.
- W4282958666 creator A5086218698 @default.
- W4282958666 date "2022-06-15" @default.
- W4282958666 modified "2023-10-03" @default.
- W4282958666 title "Squeezing Data from a Rock: Machine Learning for Martian Science" @default.
- W4282958666 cites W1113525373 @default.
- W4282958666 cites W1482949338 @default.
- W4282958666 cites W1506422675 @default.
- W4282958666 cites W1515254695 @default.
- W4282958666 cites W1529707809 @default.
- W4282958666 cites W1530832831 @default.
- W4282958666 cites W1571801203 @default.
- W4282958666 cites W1576819673 @default.
- W4282958666 cites W1591341455 @default.
- W4282958666 cites W1668621953 @default.
- W4282958666 cites W1840338487 @default.
- W4282958666 cites W1901616594 @default.
- W4282958666 cites W1952261593 @default.
- W4282958666 cites W1963985271 @default.
- W4282958666 cites W1966136668 @default.
- W4282958666 cites W1967942093 @default.
- W4282958666 cites W1973617505 @default.
- W4282958666 cites W1977389039 @default.
- W4282958666 cites W1981402289 @default.
- W4282958666 cites W1981786572 @default.
- W4282958666 cites W1983984662 @default.
- W4282958666 cites W1988764623 @default.
- W4282958666 cites W1990289290 @default.
- W4282958666 cites W1990517717 @default.
- W4282958666 cites W1991018170 @default.
- W4282958666 cites W1991934980 @default.
- W4282958666 cites W1994014950 @default.
- W4282958666 cites W1996232971 @default.
- W4282958666 cites W1996484899 @default.
- W4282958666 cites W2006113258 @default.
- W4282958666 cites W2007028585 @default.
- W4282958666 cites W2007339694 @default.
- W4282958666 cites W2009010637 @default.
- W4282958666 cites W2010204035 @default.
- W4282958666 cites W2010662118 @default.
- W4282958666 cites W2010954409 @default.
- W4282958666 cites W2011797575 @default.
- W4282958666 cites W2013057904 @default.
- W4282958666 cites W2014128561 @default.
- W4282958666 cites W2014677380 @default.
- W4282958666 cites W2023928196 @default.
- W4282958666 cites W2023934786 @default.
- W4282958666 cites W2025683761 @default.
- W4282958666 cites W2026470589 @default.
- W4282958666 cites W2031424285 @default.
- W4282958666 cites W2034617071 @default.
- W4282958666 cites W2035196702 @default.
- W4282958666 cites W2035387294 @default.
- W4282958666 cites W2036026278 @default.
- W4282958666 cites W2036585620 @default.
- W4282958666 cites W2050653203 @default.
- W4282958666 cites W2053160423 @default.
- W4282958666 cites W2055906658 @default.
- W4282958666 cites W2056036768 @default.
- W4282958666 cites W2057087866 @default.
- W4282958666 cites W2058900043 @default.
- W4282958666 cites W2063861150 @default.
- W4282958666 cites W2065618632 @default.
- W4282958666 cites W2065782610 @default.
- W4282958666 cites W2065828016 @default.
- W4282958666 cites W2069156210 @default.
- W4282958666 cites W2070261027 @default.
- W4282958666 cites W2070870769 @default.
- W4282958666 cites W2071698399 @default.
- W4282958666 cites W2074151385 @default.
- W4282958666 cites W2076509405 @default.
- W4282958666 cites W2079810998 @default.
- W4282958666 cites W2081490582 @default.
- W4282958666 cites W2082289296 @default.
- W4282958666 cites W2084040909 @default.
- W4282958666 cites W2084431186 @default.
- W4282958666 cites W2089468765 @default.
- W4282958666 cites W2090265020 @default.
- W4282958666 cites W2092255863 @default.
- W4282958666 cites W2095232025 @default.
- W4282958666 cites W2099454382 @default.
- W4282958666 cites W2100270609 @default.
- W4282958666 cites W2103139809 @default.
- W4282958666 cites W2104636679 @default.
- W4282958666 cites W2104766360 @default.
- W4282958666 cites W2108085482 @default.
- W4282958666 cites W2109258549 @default.
- W4282958666 cites W2111685427 @default.
- W4282958666 cites W2116772412 @default.
- W4282958666 cites W2117202740 @default.
- W4282958666 cites W2120074228 @default.
- W4282958666 cites W2125027820 @default.
- W4282958666 cites W2126791288 @default.
- W4282958666 cites W2128144169 @default.
- W4282958666 cites W2128728535 @default.