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Learning Self-Awareness for Autonomous Vehicles: Exploring Multisensory Incremental Models

机译:学习自治车辆的自我意识:探索多义增量模型

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摘要

The technology for autonomous vehicles is close to replacing human drivers by artificial systems endowed with high-level decision-making capabilities. In this regard, systems must learn about the usual vehicle's behavior to predict imminent difficulties before they happen. An autonomous agent should be capable of continuously interacting with multi-modal dynamic environments while learning unseen novel concepts. Such environments are not often available to train the agent on it, so the agent should have an understanding of its own capacities and limitations. This understanding is usually called self-awareness. This paper proposes a multi-modal self-awareness modeling of signals coming from different sources. This paper shows how different machine learning techniques can be used under a generic framework to learn single modality models by using Dynamic Bayesian Networks. In the presented case, a probabilistic switching model and a bank of generative adversarial networks are employed to model a vehicle's positional and visual information respectively. Our results include experiments performed on a real vehicle, highlighting the potentiality of the proposed approach at detecting abnormalities in real scenarios.
机译:自治车辆技术接近以赋予高级别决策能力的人工系统代替人类驱动因素。在这方面,系统必须了解通常的车辆的行为,以预测在他们发生之前即将发生的困难。自主代理应该能够与多模态动态环境连续交互,同时学习看不见的新颖概念。这些环境通常不可能培训代理人,因此代理人应该了解自己的能力和限制。这种理解通常称为自我意识。本文提出了来自不同来源的信号的多模态自我意识建模。本文显示了如何在通用框架下使用不同的机器学习技术来通过使用动态贝叶斯网络来学习单个模态模型。在呈现的情况下,采用概率转换模型和一组生成的对抗网络来分别模拟车辆的位置和视觉信息。我们的结果包括在真实车辆上进行的实验,突出了所提出的方法在检测实际情况异常时的潜力。

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