Grounding Human-To-Vehicle Advice for Self-Driving Vehicles

Jinkyu Kim, Teruhisa Misu, Yi-Ting Chen, Ashish Tawari, J. Canny
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引用次数: 51

Abstract

Recent success suggests that deep neural control networks are likely to be a key component of self-driving vehicles. These networks are trained on large datasets to imitate human actions, but they lack semantic understanding of image contents. This makes them brittle and potentially unsafe in situations that do not match training data. Here, we propose to address this issue by augmenting training data with natural language advice from a human. Advice includes guidance about what to do and where to attend. We present the first step toward advice giving, where we train an end-to-end vehicle controller that accepts advice. The controller adapts the way it attends to the scene (visual attention) and the control (steering and speed). Attention mechanisms tie controller behavior to salient objects in the advice. We evaluate our model on a novel advisable driving dataset with manually annotated human-to-vehicle advice called Honda Research Institute-Advice Dataset (HAD). We show that taking advice improves the performance of the end-to-end network, while the network cues on a variety of visual features that are provided by advice. The dataset is available at https://usa.honda-ri.com/HAD.
为自动驾驶汽车提供接地人对车建议
最近的成功表明,深度神经控制网络很可能成为自动驾驶汽车的关键组成部分。这些网络在大型数据集上训练以模仿人类行为,但它们缺乏对图像内容的语义理解。这使得它们在与训练数据不匹配的情况下变得脆弱和潜在的不安全。在这里,我们建议通过使用来自人类的自然语言建议来增强训练数据来解决这个问题。建议包括关于做什么和在哪里参加的指导。我们提出了建议给出的第一步,在这里我们训练一个端到端接受建议的车辆控制器。控制器调整它关注场景(视觉注意力)和控制(转向和速度)的方式。注意机制将控制器行为与建议中的突出对象联系起来。我们在一个新的建议驾驶数据集上评估我们的模型,该数据集带有手动注释的人对车建议,称为本田研究所建议数据集(HAD)。我们表明,接受建议可以提高端到端网络的性能,而网络会提示由建议提供的各种视觉特征。该数据集可在https://usa.honda-ri.com/HAD上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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