تفاصيل الأوراق البحثية

Comparison study on the deep-learning- based detection of Mars craters

خلاصة البحث

Deep-learning methods are of interest for the analysis of imagery and digital elevation models from Mars orbiting satellites. They detect various atmosphere and surface characteristics. For instance, these include dust storms and craters [1,2]. We approach this topic by using the deep-learning-based crater detection algorithm DeepMars2 [3,4]. The algorithm is applied to two digital elevation models (DEMs) of the Mars surface. The DEMs are based on the satellite instruments MOLA/MGS (Mars Orbiter Laser Altimeter/Mars Global Surveyor) and HRSC/MEX (High Resolution Stereo Camera/Mars Express) and have different resolution. Crater detection statistics are compared between both DEMs.

الباحثون
سنة النشر
2023
مجالات البحث
استكشاف الفضاء
الناشر
[EGU] European Geosciences Union General Assembly
DOI
10.5194/egusphere-egu23-7761
نوع البحث
مساهمة مؤتمر
الأبحاث ذات الصلة