用卷积神经网络对砖石砖进行分类——一个校企合作项目的案例研究

Mika Iitti, J. Grönman, J. Turunen, T. Lipping
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引用次数: 0

摘要

本文介绍了一个案例研究-开发基于计算机的分类框架,将砖石砖分为三种质量类别-作为Robocoast研发中心项目的一部分进行。该项目旨在通过建立一个创新平台,使企业能够与大学专家一起解决他们面临的挑战,从而更好地促进大学和工业界之间的合作。该项目还促进了大学之间的合作,作为机器人智能能力中心的一部分,该中心是萨塔昆塔应用科学大学(SAMK)和坦佩雷大学波里分校的联合研究和创新平台。砖的自动分类很重要,因为可以预见,由自动分类器驱动的机械臂可以取代目前在砖厂由人类完成的繁重而繁琐的工作。提出了一种基于卷积神经网络的解决方案,使用预训练的VGG-16深度学习架构。在考虑所有三个质量类别时,获得了88%的总体准确率。当仅丢弃3类砖时,即不适合任何建筑工作的砖,准确率为93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Masonry Bricks Using Convolutional Neural Networks – a Case Study in a University-Industry Collaboration Project
This paper presents a case study - developing a computer-based classification framework to classify masonry bricks into three quality categories - carried out as a part of the Robocoast R&D Center project. The project aims at better collaboration between universities and industry by establishing an innovation platform where companies can bring their challenges to be addressed together with university experts. The project also promotes collaboration between universities being a part of the RoboAI Competence Centre - a joint research and innovation platform of Satakunta University of Applied Sciences (SAMK) and Tampere University, Pori unit. Automatic classification of bricks is important as it is foreseen that a robotic arm, powered by an automatic classifier, could replace the heavy and tedious work currently performed by humans in brick factories. A convolutional neural network-based solution, using a pretrained VGG-16 deep learning architecture, is proposed. Overall accuracy of 88 % was obtained when considering all three quality classes. When only discarding class 3 bricks, i.e., those that are not suitable for any construction work, the accuracy was 93 %.
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