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关于自主学习方法及其对自动驾驶影响的综合研究。

A Comprehensive Study on Self-Learning Methods and Implications to Autonomous Driving.

作者信息

Xing Jiaming, Wei Dengwei, Zhou Shanghang, Wang Tingting, Huang Yanjun, Chen Hong

出版信息

IEEE Trans Neural Netw Learn Syst. 2025 May;36(5):7786-7805. doi: 10.1109/TNNLS.2024.3440498. Epub 2025 May 2.

Abstract

As artificial intelligence (AI) has already seen numerous successful applications, the upcoming challenge lies in how to realize artificial general intelligence (AGI). Self-learning algorithms can autonomously acquire knowledge and adapt to new, demanding applications, recognized as one of the most effective techniques to overcome this challenge. Although many related studies have been conducted, there is still no comprehensive and systematic review available, nor well-founded recommendations for the application of autonomous intelligent systems, especially autonomous driving. As a result, this article comprehensively analyzes and classifies self-learning algorithms into three categories: broad self-learning, narrow self-learning, and limited self-learning. These categories are used to describe the popular usage, the most promising techniques, and the current status of hybridization with self-supervised learning. Then, the narrow self-learning is divided into three parts based on the self-learning realization path: sample self-learning, model self-learning, and self-learning architecture. For each method, this article discusses in detail its self-learning capacity, challenges, and applications to autonomous driving. Finally, the future research directions of self-learning algorithms are pointed out. It is expected that this study has the potential to eventually contribute to revolutionizing autonomous driving technology.

摘要

随着人工智能(AI)已经有了众多成功应用,接下来的挑战在于如何实现通用人工智能(AGI)。自学习算法能够自主获取知识并适应新的、具有挑战性的应用,被认为是克服这一挑战的最有效技术之一。尽管已经进行了许多相关研究,但仍缺乏全面系统的综述,也没有关于自主智能系统应用,尤其是自动驾驶应用的有充分依据的建议。因此,本文全面分析并将自学习算法分为三类:广义自学习、狭义自学习和有限自学习。这些类别用于描述其普遍用法、最有前景的技术以及与自监督学习的混合现状。然后,狭义自学习根据自学习实现路径分为三个部分:样本自学习、模型自学习和自学习架构。对于每种方法,本文详细讨论了其自学习能力、挑战以及在自动驾驶中的应用。最后,指出了自学习算法未来的研究方向。预计这项研究最终有可能为自动驾驶技术带来变革。

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