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Survey Paper | Computer Science & Engineering | India | Volume 4 Issue 12, December 2015
A Survey Paper on Crater Detection
Jyoti Patil [3] | Dr. Srinivas Narasimha Kini
Abstract: Craters are the most plenteous landform on the planet surface, which could give key intimations to planetary science. Because of varieties in the landscape, brightening, and scale, it is trying to distinguish Craters through remote detecting pictures and it requires an effective crater feature extraction method. In this paper, we address this issue utilizing Gist features, which can give exceedingly compelling depictions on crater's nearby edges and worldwide structure. The proposed crater's discovery technique contains three key steps. To begin with, we separate all candidate craters on a planet picture utilizing edge based technique and Hough transform. Second, Gist elements are created from chose preparing tests. Third, Craters discovery is led utilizing Gist features vectors with random forest classification. Contrasted with pixel based also, Haar-like components, our strategy indicates more exact craters acknowledgment, and accomplishes fulfilled results in the analyses directed on the Mars Orbiter Camera (MOC) database.
Keywords: Craters Detection, Gist features, Random forest, Hough transform, Haar Like Elements
Edition: Volume 4 Issue 12, December 2015,
Pages: 81 - 85
Similar Articles with Keyword 'Random forest'
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Research Paper, Computer Science & Engineering, India, Volume 9 Issue 11, November 2020
Pages: 457 - 461Artificial Intelligence for Hiring
Ishan Borker | Ashok Veda [2]
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Research Paper, Computer Science & Engineering, India, Volume 9 Issue 7, July 2020
Pages: 1454 - 1458Heart Disease Prediction with Machine Learning Approaches
Megha Kamboj