Gespeichert in:
Bibliographische Detailangaben
Hauptverfasser: Huang, Jiaxin, Liu, Hanyu, Ma, Yunsheng, Shen, Jian, Zheng, Yilin, Wen, Jiayi, Wan, Baishu, Li, Pan, Song, Zhigong
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2509.11109
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
_version_ 1866914095789244416
author Huang, Jiaxin
Liu, Hanyu
Ma, Yunsheng
Shen, Jian
Zheng, Yilin
Wen, Jiayi
Wan, Baishu
Li, Pan
Song, Zhigong
author_facet Huang, Jiaxin
Liu, Hanyu
Ma, Yunsheng
Shen, Jian
Zheng, Yilin
Wen, Jiayi
Wan, Baishu
Li, Pan
Song, Zhigong
contents The embodied intelligence bridges the physical world and information space. As its typical physical embodiment, humanoid robots have shown great promise through robot learning algorithms in recent years. In this study, a hardware platform, including humanoid robot and exoskeleton-style teleoperation cabin, was developed to realize intuitive remote manipulation and efficient collection of anthropomorphic action data. To improve the perception representation of humanoid robot, an imitation learning framework, termed Frequency-Enhanced Wavelet-based Transformer (FEWT), was proposed, which consists of two primary modules: Frequency-Enhanced Efficient Multi-Scale Attention (FE-EMA) and Time-Series Discrete Wavelet Transform (TS-DWT). By combining multi-scale wavelet decomposition with the residual network, FE-EMA can dynamically fuse features from both cross-spatial and frequency-domain. This fusion is able to capture feature information across various scales effectively, thereby enhancing model robustness. Experimental performance demonstrates that FEWT improves the success rate of the state-of-the-art algorithm (Action Chunking with Transformers, ACT baseline) by up to 30% in simulation and by 6-12% in real-world.
format Preprint
id arxiv_https___arxiv_org_abs_2509_11109
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FEWT: Improving Humanoid Robot Perception with Frequency-Enhanced Wavelet-based Transformers
Huang, Jiaxin
Liu, Hanyu
Ma, Yunsheng
Shen, Jian
Zheng, Yilin
Wen, Jiayi
Wan, Baishu
Li, Pan
Song, Zhigong
Robotics
The embodied intelligence bridges the physical world and information space. As its typical physical embodiment, humanoid robots have shown great promise through robot learning algorithms in recent years. In this study, a hardware platform, including humanoid robot and exoskeleton-style teleoperation cabin, was developed to realize intuitive remote manipulation and efficient collection of anthropomorphic action data. To improve the perception representation of humanoid robot, an imitation learning framework, termed Frequency-Enhanced Wavelet-based Transformer (FEWT), was proposed, which consists of two primary modules: Frequency-Enhanced Efficient Multi-Scale Attention (FE-EMA) and Time-Series Discrete Wavelet Transform (TS-DWT). By combining multi-scale wavelet decomposition with the residual network, FE-EMA can dynamically fuse features from both cross-spatial and frequency-domain. This fusion is able to capture feature information across various scales effectively, thereby enhancing model robustness. Experimental performance demonstrates that FEWT improves the success rate of the state-of-the-art algorithm (Action Chunking with Transformers, ACT baseline) by up to 30% in simulation and by 6-12% in real-world.
title FEWT: Improving Humanoid Robot Perception with Frequency-Enhanced Wavelet-based Transformers
topic Robotics
url https://arxiv.org/abs/2509.11109