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Fast Object Classification and Meaningful Data Representation of Segmented Lidar Instances

机译:分段的LIDAR实例的快速对象分类和有意义的数据表示

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Object detection algorithms for Lidar data have seen numerous publications in recent years, reporting good results on dataset benchmarks oriented towards automotive requirements. Nevertheless, many of these are not deployable to embedded vehicle systems, as they require immense computational power to be executed close to real time. In this work, we propose a way to facilitate real-time Lidar object classification on CPU. We show how our approach uses segmented object instances to extract important features, enabling a computationally efficient batch-wise classification. For this, we introduce a data representation which translates three-dimensional information into small image patches, using decomposed normal vector images. We couple this with dedicated object statistics to handle edge cases. We apply our method on the tasks of object detection and semantic segmentation, as well as the relatively new challenge of panoptic segmentation. Through evaluation, we show, that our algorithm is capable of producing good results on public data, while running in real time on CPU without using specific optimisation.
机译:LIDAR数据的对象检测算法近年来看了很多出版物,在数据集基准上报告了朝向汽车要求的数据集基准。然而,许多这些不可部署到嵌入式车辆系统,因为它们需要巨大的计算能力来执行接近实时执行。在这项工作中,我们提出了一种促进CPU实时LIDAR对象分类的方法。我们展示了我们的方法如何使用分段对象实例来提取重要功能,从而实现计算有效的批量分类。为此,我们将使用分解的普通矢量图像介绍将三维信息转换为小图像斑块的数据表示。我们将其与专用对象统计数据介绍以处理边缘案例。我们在对象检测和语义分割的任务中应用我们的方法,以及Panoptic分割的相对较新的挑战。通过评估,我们显示,我们的算法能够在公共数据上产生良好的结果,同时在CPU上实时运行而不使用特定优化。

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