Model optimization and acceleration method based on meta-learning and model pruning for laser vision weld tracking system

Yanbiao Zou, Jianhui Yang
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Abstract

Purpose

This paper aims to propose a lightweight, high-accuracy object detection model designed to enhance seam tracking quality under strong arcs and splashes condition. Simultaneously, the model aims to reduce computational costs.

Design/methodology/approach

The lightweight model is constructed based on Single Shot Multibox Detector (SSD). First, a neural architecture search method based on meta-learning and genetic algorithm is introduced to optimize pruning strategy, reducing human intervention and improving efficiency. Additionally, the Alternating Direction Method of Multipliers (ADMM) is used to perform structural pruning on SSD, effectively compressing the model with minimal loss of accuracy.

Findings

Compared to state-of-the-art models, this method better balances feature extraction accuracy and inference speed. Furthermore, seam tracking experiments on this welding robot experimental platform demonstrate that the proposed method exhibits excellent accuracy and robustness in practical applications.

Originality/value

This paper presents an innovative approach that combines ADMM structural pruning and meta-learning-based neural architecture search to significantly enhance the efficiency and performance of the SSD network. This method reduces computational cost while ensuring high detection accuracy, providing a reliable solution for welding robot laser vision systems in practical applications.

基于元学习和模型剪枝的激光视觉焊缝跟踪系统模型优化和加速方法
目的 本文旨在提出一种轻量级、高精度的物体检测模型,旨在提高强弧线和飞溅条件下的接缝跟踪质量。设计/方法/途径该轻量级模型基于单发多箱检测器(SSD)构建。首先,引入基于元学习和遗传算法的神经架构搜索方法,优化剪枝策略,减少人工干预,提高效率。此外,还使用了交替方向乘法(ADMM)对 SSD 进行结构剪枝,在有效压缩模型的同时将精度损失降到最低。此外,在该焊接机器人实验平台上进行的焊缝跟踪实验表明,所提出的方法在实际应用中表现出卓越的准确性和鲁棒性。 原创性/价值 本文提出了一种创新方法,它将 ADMM 结构剪枝和基于元学习的神经架构搜索相结合,显著提高了 SSD 网络的效率和性能。该方法在保证高检测精度的同时降低了计算成本,为实际应用中的焊接机器人激光视觉系统提供了可靠的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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