Literature DB >> 34276332

Learning Then, Learning Now, and Every Second in Between: Lifelong Learning With a Simulated Humanoid Robot.

Aleksej Logacjov1, Matthias Kerzel1, Stefan Wermter1.   

Abstract

Long-term human-robot interaction requires the continuous acquisition of knowledge. This ability is referred to as lifelong learning (LL). LL is a long-standing challenge in machine learning due to catastrophic forgetting, which states that continuously learning from novel experiences leads to a decrease in the performance of previously acquired knowledge. Two recently published LL approaches are the Growing Dual-Memory (GDM) and the Self-organizing Incremental Neural Network+ (SOINN+). Both are growing neural networks that create new neurons in response to novel sensory experiences. The latter approach shows state-of-the-art clustering performance on sequentially available data with low memory requirements regarding the number of nodes. However, classification capabilities are not investigated. Two novel contributions are made in our research paper: (I) An extended SOINN+ approach, called associative SOINN+ (A-SOINN+), is proposed. It adopts two main properties of the GDM model to facilitate classification. (II) A new LL object recognition dataset (v-NICO-World-LL) is presented. It is recorded in a nearly photorealistic virtual environment, where a virtual humanoid robot manipulates 100 different objects belonging to 10 classes. Real-world and artificially created background images, grouped into four different complexity levels, are utilized. The A-SOINN+ reaches similar state-of-the-art classification accuracy results as the best GDM architecture of this work and consists of 30 to 350 times fewer neurons, evaluated on two LL object recognition datasets, the novel v-NICO-World-LL and the well-known CORe50. Furthermore, we observe an approximately 268 times lower training time. These reduced numbers result in lower memory and computational requirements, indicating higher suitability for autonomous social robots with low computational resources to facilitate a more efficient LL during long-term human-robot interactions.
Copyright © 2021 Logacjov, Kerzel and Wermter.

Entities:  

Keywords:  growing dual-memory; lifelong learning; lifelong learning dataset; long-term human-robot interaction; self-organizing incremental neural network; simulated humanoid robot

Year:  2021        PMID: 34276332      PMCID: PMC8281815          DOI: 10.3389/fnbot.2021.669534

Source DB:  PubMed          Journal:  Front Neurorobot        ISSN: 1662-5218            Impact factor:   2.650


  8 in total

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Authors:  Stephen Marsland; Jonathan Shapiro; Ulrich Nehmzow
Journal:  Neural Netw       Date:  2002 Oct-Nov

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Authors:  Yann LeCun; Yoshua Bengio; Geoffrey Hinton
Journal:  Nature       Date:  2015-05-28       Impact factor: 49.962

Review 3.  Continual lifelong learning with neural networks: A review.

Authors:  German I Parisi; Ronald Kemker; Jose L Part; Christopher Kanan; Stefan Wermter
Journal:  Neural Netw       Date:  2019-02-06

4.  Overcoming catastrophic forgetting in neural networks.

Authors:  James Kirkpatrick; Razvan Pascanu; Neil Rabinowitz; Joel Veness; Guillaume Desjardins; Andrei A Rusu; Kieran Milan; John Quan; Tiago Ramalho; Agnieszka Grabska-Barwinska; Demis Hassabis; Claudia Clopath; Dharshan Kumaran; Raia Hadsell
Journal:  Proc Natl Acad Sci U S A       Date:  2017-03-14       Impact factor: 11.205

5.  Learning without Forgetting.

Authors:  Zhizhong Li; Derek Hoiem
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2017-11-14       Impact factor: 6.226

6.  Lifelong learning of human actions with deep neural network self-organization.

Authors:  German I Parisi; Jun Tani; Cornelius Weber; Stefan Wermter
Journal:  Neural Netw       Date:  2017-09-20

7.  Lifelong Learning of Spatiotemporal Representations With Dual-Memory Recurrent Self-Organization.

Authors:  German I Parisi; Jun Tani; Cornelius Weber; Stefan Wermter
Journal:  Front Neurorobot       Date:  2018-11-28       Impact factor: 2.650

8.  Teaching NICO How to Grasp: An Empirical Study on Crossmodal Social Interaction as a Key Factor for Robots Learning From Humans.

Authors:  Matthias Kerzel; Theresa Pekarek-Rosin; Erik Strahl; Stefan Heinrich; Stefan Wermter
Journal:  Front Neurorobot       Date:  2020-06-09       Impact factor: 2.650

  8 in total
  1 in total

1.  NeuroVis: Real-Time Neural Information Measurement and Visualization of Embodied Neural Systems.

Authors:  Arthicha Srisuchinnawong; Jettanan Homchanthanakul; Poramate Manoonpong
Journal:  Front Neural Circuits       Date:  2021-12-27       Impact factor: 3.492

  1 in total

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