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首页> 外文期刊>IEEE Transactions on Intelligent Vehicles >Incorporating Human Domain Knowledge in 3-D LiDAR-Based Semantic Segmentation
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Incorporating Human Domain Knowledge in 3-D LiDAR-Based Semantic Segmentation

机译:在基于3-D LIDAR的语义分割中纳入人类领域知识

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摘要

This article studies semantic segmentation using 3D LiDAR data. Popular deep learning methods applied for this task require a large number of manual annotations to train the parameters. We propose a new method that makes full use of the advantages of traditional methods and deep learning methods via incorporating human domain knowledge into the neural network model to reduce the demand for large numbers of manual annotations and improve the training efficiency. We first pretrain a model with autogenerated samples from a rule-based classifier so that human knowledge can be propagated into the network. Based on the pretrained model, only a small set of annotations is required for further fine-tuning. Quantitative experiments show that the pretrained model achieves better performance than random initialization in almost all cases; furthermore, our method can achieve similar performance with fewer manual annotations.
机译:本文使用3D LIDAR数据研究语义分割。适用于此任务的流行深度学习方法需要大量的手动注释来培训参数。我们提出了一种新的方法,可以通过将人类领域知识纳入神经网络模型来充分利用传统方法和深度学习方法的优点,以减少大量手动注释的需求,提高培训效率。我们首先使用基于规则的分类器具有自动化样本的模型,使得人类知识可以传播到网络中。基于预磨料模型,只需要一小一组注释来进行进一步微调。定量实验表明,预磨料模型在几乎所有情况下的随机初始化比随机初始化更好;此外,我们的方法可以通过更少的手动注释来实现类似的性能。

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