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Drivable path detection based on image fusion for unmanned ground vehicles

机译:基于图像融合的无人机地面车辆的可驱动路径检测

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摘要

Autonomous vehicles are used for a range of tasks, such as automated highway driving, transporting work, etc. These vehicles are used both in structured and unstructured environments. This work presents an effective method for path detection using statistical texture features extracted from fused LIDAR sensor and visual camera images. An edge-based feature detection approach is adopted for image registration. The Grey Level Co-occurrence Matrix (GLCM)-based texture features are extracted from the fused image. Classification performance of K-NN and Support Vector Machine (SVM) classifiers are analysed in this work. For experimentation, the data available in Ford Campus Vision data set are used. The results of this new approach are very promising for path detection problem of unmanned ground vehicles.
机译:自动车辆用于一系列任务,例如自动化公路驾驶,运输工作等。这些车辆在结构化和非结构化环境中使用。 该工作提供了一种使用从熔融激光雷达传感器和视觉相机图像中提取的统计纹理特征进行路径检测的有效方法。 采用基于边缘的特征检测方法来进行图像配准。 从融合图像中提取灰度共发生矩阵(GLCM)基础的纹理特征。 在这项工作中分析了K-NN和支持向量机(SVM)分类器的分类性能。 对于实验,使用福特校园视觉数据集提供的数据。 这种新方法的结果非常有希望用于无人机地面车辆的路径检测问题。

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