Using MRNet to Predict Lunar Rock Categories Detected by Chang'e 5 Probe
Jin Cui, Yifei Zou, Siyuan Zhang

TL;DR
This paper introduces MRNet, a neural network architecture combining VGG16, dilated convolution, and U-Net for improved lunar rock classification from Chang'e 5 images, outperforming existing methods.
Contribution
The paper proposes MRNet, a novel deep learning model that enhances lunar rock classification accuracy using a combined VGG16, dilated convolution, and U-Net architecture.
Findings
MRNet achieves higher accuracy than existing algorithms.
Experimental results demonstrate improved lunar rock identification.
The dataset CE5ROCK supports effective training and evaluation.
Abstract
China's Chang'e 5 mission has been a remarkable success, with the chang'e 5 lander traveling on the Oceanus Procellarum to collect images of the lunar surface. Over the past half century, people have brought back some lunar rock samples, but its quantity does not meet the need for research. Under current circumstances, people still mainly rely on the analysis of rocks on the lunar surface through the detection of lunar rover. The Oceanus Procellarum, chosen by Chang'e 5 mission, contains various kind of rock species. Therefore, we first applied to the National Astronomical Observatories of the China under the Chinese Academy of Sciences for the Navigation and Terrain Camera (NaTeCam) of the lunar surface image, and established a lunar surface rock image data set CE5ROCK. The data set contains 100 images, which randomly divided into training, validation and test set. Experimental results…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Concatenated Skip Connection · Max Pooling · Convolution · U-Net · Dilated Convolution · Sparse Evolutionary Training
