首页> 外文会议>2012 IEEE International Conference on Imaging Systems and Techniques >Autonomous robotic ground penetrating radar surveys of ice sheets; Using machine learning to identify hidden crevasses
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Autonomous robotic ground penetrating radar surveys of ice sheets; Using machine learning to identify hidden crevasses

机译:自主机器人穿透冰层的雷达测量;使用机器学习识别隐藏的裂缝

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This paper presents methods to continue development of a completely autonomous robotic system employing ground penetrating radar imaging of the glacier sub-surface. We use well established machine learning algorithms and appropriate un-biased processing, particularly those which are also suitable for real-time image analysis and detection. We tested and evaluated three processing schemes in conjunction with a Support Vector Machine (SVM) trained on 15 examples of Antarctic GPR imagery, collected by our robot and a Pisten Bully tractor in 2010 in the shear zone near McMurdo Station. Using a modified cross validation technique, we correctly classified all examples with a radial basis kernel SVM trained and evaluated on down-sampled and texture-mapped GPR images of crevasses, compared to 60% classification rate using raw data. We also test the most successful processing scheme on a larger dataset, comprised of 94 GPR images of crevasse crossings recorded in the same deployment. Our experiments demonstrate the promise and reliability of real-time object detection and classification with robotic GPR imaging surveys.
机译:本文介绍了继续开发采用冰川子表面的探地雷达成像技术的全自动机器人系统的方法。我们使用完善的机器学习算法和适当的无偏处理,尤其是那些也适用于实时图像分析和检测的算法。我们结合支持向量机(SVM)对15种南极GPR图像进行了训练,对这三种处理方案进行了测试和评估,该示例由我们的机器人和一台Pisten Bully拖拉机于2010年在McMurdo站附近的剪切带采集。使用改进的交叉验证技术,我们使用径向基核SVM对裂缝的降采样和纹理映射GPR图像进行训练和评估的径向基核SVM进行了正确分类,而使用原始数据的分类率为60%。我们还在更大的数据集上测试了最成功的处理方案,该数据集由在同一部署中记录的94个GPR缝隙交叉口图像组成。我们的实验证明了通过机器人GPR成像调查进行实时目标检测和分类的前景和可靠性。

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