基于生成重放的物体硬度识别触觉连续学习网络

IF 6.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS IEEE Transactions on Automation Science and Engineering Pub Date : 2024-12-30 DOI:10.1109/TASE.2024.3516378
Yiwen Liu;Zhengkun Yi;Senlin Fang;Yupo Zhang;Feng Wan;Zhi-Xin Yang;Xu Lu;Xinyu Wu
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引用次数: 0

摘要

目前,深度神经网络在机器人触觉感知方面非常有效。然而,如何解决机器人在开放和动态环境下的触觉感知持续学习问题是一个主要的挑战。本文针对触觉感知领域的领域增量学习任务,提出了一种新的连续学习方法。具体来说,我们引入了一种形态特定的变分自编码器,它可以通过在持续学习过程中生成伪样本来减轻灾难性遗忘。我们将生成模型和判别模型整合为一个模型,减小了模型的大小,提高了持续学习的能力。此外,考虑到硬度等级之间的有序信息,我们提出在模型中加入条件信息,并引入修正的损失函数将潜在值与硬度信息结合起来,通过控制伪样本生成的分布和质量来提高持续学习性能。随后,我们设计了一个触觉机器人实验,收集了硬度数据,并在该物体硬度识别任务上对我们的模型进行了测试。我们通过实验证明,经过训练,该模型在学习了三个任务项后,仍然可以保持94%以上的准确率。在机器人触觉感知领域,机器人的持续学习问题是一个迫切需要解决的关键问题。我们希望机器人能够有效地从事跨多个任务的持续学习,确保获得新知识,同时降低忘记先前获得的知识的风险。本文针对领域增量学习任务,提出了一种新的持续学习方法。在连续学习过程中引入了一种基于伪样本重放的形态特异性变分自编码器,减小了模型的大小,提高了连续学习的能力。我们通过整合生成和判别模型,结合条件信息来控制重放样本类型的分布,以及利用样本之间的顺序关系来提高模型性能。实验证明,该方法能够有效地提高触觉领域增量学习任务的准确率。
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TactCLNet: Tactile Continual Learning Network Based on Generative Replay for Object Hardness Recognition
Currently, deep neural networks can be extremely effective in robotic tactile perception. However, a major challenge is to solve the problem of continual learning of robotic tactile perception in an open and dynamic environment. In this paper, we propose a novel continual learning method for the domian incremental learning task in the field of tactile perception. To be specific, we introduce a morphology-specific variational autoencoders which can mitigate catastrophic forgetting by generating pseudo-samples for training in the continual learning process. We integrate the generative model and the discriminative model into one model, which reduces the size of model and improves the continual learning ability. In addition, considering the ordinal information between the hardness levels, we propose to add conditional information to the model and introduce a modified loss function to combine the latent value with the hardness information, which improves the continual learning performance by controlling the distribution and quality of pseudo-sample generation. Following this, we designed a tactile robot experiment, collected hardness data, and tested our model on this object hardness recognition task. We show experimentally that, after training, the model can still maintain the accuracy of more than 94% after learning three tasks in terms. Note to Practitioners—In the field of robotics tactile perception, the issue of continual learning in robots is a crucial problem that urgently requires resolution. We hope robots to effectively engage in continual learning across multiple tasks, ensuring the acquisition of new knowledge while mitigating the risk of forgetting previously acquired knowledge. In this paper, we propose a novel continual learning method for the domian incremental learning task. we introduce a morphology-specific variational autoencoders based on replaying pseudo-samples during continual learning process which reduces the size of model and improves the continual learning ability. We enhance model performance by integrating generative and discriminative models, incorporating conditional information to control the distribution of replayed sample types, and leveraging sequential relationships among samples. It is proved that the proposed method is able to effectively improve the accuracy in a tactile domian incremental learning task.
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来源期刊
IEEE Transactions on Automation Science and Engineering
IEEE Transactions on Automation Science and Engineering 工程技术-自动化与控制系统
CiteScore
12.50
自引率
14.30%
发文量
404
审稿时长
3.0 months
期刊介绍: The IEEE Transactions on Automation Science and Engineering (T-ASE) publishes fundamental papers on Automation, emphasizing scientific results that advance efficiency, quality, productivity, and reliability. T-ASE encourages interdisciplinary approaches from computer science, control systems, electrical engineering, mathematics, mechanical engineering, operations research, and other fields. T-ASE welcomes results relevant to industries such as agriculture, biotechnology, healthcare, home automation, maintenance, manufacturing, pharmaceuticals, retail, security, service, supply chains, and transportation. T-ASE addresses a research community willing to integrate knowledge across disciplines and industries. For this purpose, each paper includes a Note to Practitioners that summarizes how its results can be applied or how they might be extended to apply in practice.
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