LRe Trans Model of Interface Visual Interaction Suitable for Preschooler Robots

Xiaoqing Yang, Jonathan Chung Ee Yong, Bo Li
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Abstract

Traditional contact and non-contact methods for estimating visual interaction forces and recognizing behavior have significant drawbacks with regards to biocompatibility, sensor size, the fragility of materials, and balancing algorithm accuracy and speed. To address these limitations, the study suggests a lightweight, regularized transformer-based visual interaction behavior recognition method. The method contains three important parts: image input and slice preprocessing, global semantic representation based on deep lightweight vision Transformer, and regularized interaction behavior recognition. At the same time, the new model is able to collect and analyze preschool children's image data through a dynamic window, and then realize the visual interaction process for preschool children through machine interaction. Experiments shows that the new method achieves 97.6% accuracy and 97.5% F1 score for interaction behavior recognition on a large-scale robot interaction dataset, with a single average inference time of only 0.18 seconds. The experiment yields significant results indicating that the LRe Trans-based method for recognizing visual interaction behavior holds advantages for the specific problem of robots interacting with preschoolers. The method not only provides valuable insights into the theoretical basis of this field but also offers potential applications for future research.
适合学龄前机器人的界面视觉交互 LRe Trans 模型
传统的接触式和非接触式视觉交互力估算和行为识别方法在生物兼容性、传感器尺寸、材料易碎性以及平衡算法准确性和速度等方面存在明显缺陷。针对这些局限性,研究提出了一种基于正则化变压器的轻量级视觉交互行为识别方法。该方法包含三个重要部分:图像输入和切片预处理、基于深度轻量级视觉变换器的全局语义表示和正则化交互行为识别。同时,新模型能够通过动态窗口采集和分析学龄前儿童的图像数据,并通过机器交互实现学龄前儿童的视觉交互过程。实验表明,新方法在大规模机器人交互数据集上的交互行为识别准确率达到 97.6%,F1 分数达到 97.5%,单次平均推理时间仅为 0.18 秒。实验得出的重要结果表明,基于 LRe Trans 的视觉交互行为识别方法在机器人与学龄前儿童交互这一特定问题上具有优势。该方法不仅为这一领域的理论基础提供了有价值的见解,还为未来研究提供了潜在应用。
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