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CraterIDNet: An End-to-End Fully Convolutional Neural Network for Crater Detection and Identification in Remotely Sensed Planetary Images

机译:CrateridNet:用于遥感行星图像的火山口检测和识别的端到端全卷积神经网络

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摘要

The detection and identification of impact craters on a planetary surface are crucially important for planetary studies and autonomous navigation. Crater detection refers to finding craters in a given image, whereas identification means to actually mapping them to particular reference craters. However, no method is available for simultaneously detecting and identifying craters with sufficient accuracy and robustness. Thus, this study proposes a novel end-to-end fully convolutional neural network (CNN), namely, CraterIDNet, which takes remotely sensed planetary images of any size as input and outputs detected crater positions, apparent diameters, and identification results. CraterIDNet comprises two pipelines, namely, crater detection pipeline (CDP) and crater identification pipeline (CIP). First, we propose a pre-trained model with high generalization performance for transfer learning. Then, anchor scale optimization and anchor density adjustment are proposed for CDP. In addition, multi-scale impact craters are detected simultaneously by using different feature maps with multi-scale receptive fields. These strategies considerably improve the detection performance of small craters. Furthermore, a grid pattern layer is proposed to generate grid patterns with rotation and scale invariance for CIP. The grid pattern integrates the distribution and scale information of nearby craters, which will remarkably improve identification robustness when combined with the CNN framework. We comprehensively evaluate CraterIDNet and present state-of-the-art crater detection and identification performance with a small network architecture (4 MB).
机译:行星表面上冲击陨石坑的检测和识别对于行星研究和自主导航来说至关重要。火山口检测是指在给定图像中找到陨石坑,而识别装置实际地将它们映射到特定参考陨石坑。然而,没有任何方法可用于同时检测和识别具有足够精度和鲁棒性的陨石坑。因此,本研究提出了一种新颖的端到端全卷积神经网络(CNN),即CrateridNet,其采用任何尺寸的远程感测的行星图像,作为输入,输出检测到的火山口位置,表观直径和识别结果。 CrateridNet包括两个管道,即火山口检测管道(CDP)和火山口识别管道(CIP)。首先,我们提出了一个预先训练的模型,具有高泛化性能进行转移学习。然后,提出了用于CDP的锚尺度优化和锚浓度调整。此外,通过使用具有多尺度接收领域的不同特征映射来同时检测多尺度冲击陨石坑。这些策略大大提高了小陨石坑的检测性能。此外,提出了一种网格图案层以产生具有旋转的网格图案和用于CIP的尺度不变性。网格图案集成了附近陨石坑的分布和比例信息,这将在与CNN框架结合时显着提高识别稳健性。我们全面评估CraterIdnet和现有最先进的火山口检测和识别性能,具有小型网络架构(4 MB)。

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