持续学习能否应对现实世界的挑战?

ArXiv Pub Date : 2024-02-15 DOI:10.48550/arXiv.2402.10130
Theodora Kontogianni, Yuanwen Yue, Siyu Tang, Konrad Schindler
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引用次数: 0

摘要

尽管持续学习在学术界有着悠久的历史和良好的口碑,但其在现实世界中的应用仍然相当有限。本文认为,造成这一差距的原因是持续学习的实际挑战与使用中的评估协议之间存在偏差,导致提出的解决方案无法有效解决现实世界中的复杂问题。我们利用新的三维语义分割基准 OCL-3DSS 验证了我们的假设,并评估了迄今为止取得的进展。我们利用更现实的协议来研究文献中的各种持续学习方案,这些协议要求在动态的真实世界场景(如机器人和三维视觉应用)中进行在线持续学习。结果令人警醒:所有考虑的方法都表现不佳,明显偏离了联合离线训练的上限。这就对现有方法在现实环境中的适用性提出了质疑。我们的论文旨在启动范式转变,倡导通过新的实验协议采用持续学习方法,更好地模拟现实世界的条件,以促进该领域的突破。
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Is Continual Learning Ready for Real-world Challenges?
Despite continual learning's long and well-established academic history, its application in real-world scenarios remains rather limited. This paper contends that this gap is attributable to a misalignment between the actual challenges of continual learning and the evaluation protocols in use, rendering proposed solutions ineffective for addressing the complexities of real-world setups. We validate our hypothesis and assess progress to date, using a new 3D semantic segmentation benchmark, OCL-3DSS. We investigate various continual learning schemes from the literature by utilizing more realistic protocols that necessitate online and continual learning for dynamic, real-world scenarios (eg., in robotics and 3D vision applications). The outcomes are sobering: all considered methods perform poorly, significantly deviating from the upper bound of joint offline training. This raises questions about the applicability of existing methods in realistic settings. Our paper aims to initiate a paradigm shift, advocating for the adoption of continual learning methods through new experimental protocols that better emulate real-world conditions to facilitate breakthroughs in the field.
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