通过计算机视觉和机器学习技术优化库存管理

William Villegas-Ch , Alexandra Maldonado Navarro , Santiago Sanchez-Viteri
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引用次数: 0

摘要

本研究介绍了计算机视觉平台的实施和评估情况,以优化仓库库存管理。该解决方案整合了机器学习和计算机视觉技术,克服了传统方法和现有自动化系统的局限性,解决了库存准确性和运营效率方面的关键挑战。该平台使用卷积神经网络以及 TensorFlow 和 PyTorch 等开源库,从实时捕获的图像中识别产品并对其进行准确分类。通过在自然仓库环境中的实际应用,可以将拟议的平台与传统系统进行比较,结果发现该平台有了显著改善,例如库存清点所需时间减少了 45%,库存准确率提高了 9%。尽管面临员工抵制变革和图像质量技术限制等挑战,但通过有效的变革管理策略和算法改进,这些困难都被克服了。这项研究的结果确定了计算机视觉技术改变仓库运作的潜力,为库存管理提供了一个实用且适应性强的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of inventory management through computer vision and machine learning technologies

This study presents implementing and evaluating a computer vision platform to optimize warehouse inventory management. Integrating machine learning and computer vision technologies, this solution addresses critical challenges in inventory accuracy and operational efficiency, overcoming the limitations of traditional methods and pre-existing automated systems. The platform uses convolutional neural networks and open-source libraries such as TensorFlow and PyTorch to recognize and accurately classify products from images captured in real time. Practical implementation in a natural warehouse environment allowed the proposed platform to be compared with traditional systems, highlighting significant improvements, such as a 45% reduction in the time required for inventory counting and a 9% increase in inventory accuracy. Despite facing challenges such as staff resistance to change and technical limitations on image quality, these difficulties were overcome through effective change management strategies and algorithm improvements. The findings of this study identify the potential for computer vision technology to transform warehouse operations, offering a practical and adaptable solution for inventory management.

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5.60
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