Evaluation of the particle size distribution of on-site rockfill using mask R-CNN deep learning model

Liqun Fu, Xiaorong Xu, Feng Jin, Hu Zhou
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引用次数: 2

Abstract

Particle size distribution (PSD) of the on-site rockfill is one of the most critical factors in evaluating the quality assessment of the rock-filled concrete (RFC). Due to the large quantities and volume, it is difficult to measure the grain size of each rock manually. Image-based methods are widely adopted for the grain segmentation, but the result is not ideal if the rocks are closely connected and overlapped. In this study, a new model Mask R-CNN from the perspective of deep learning is deployed to develop an automatic measurement method of rockfill PSD. The model training was conducted using photos captured from on-site rockfill in Fengguang RFC dam of China. The results of the trained model agree well with the artificial measurements, and it proves Mask R-CNN as an effective technology for the automated estimation of the rockfill PSD in the engineering practice.
基于掩模R-CNN深度学习模型的现场堆石料粒径分布评价
现场堆石料的粒径分布是评价堆石料混凝土质量的关键因素之一。由于数量大、体积大,很难人工测量每块岩石的粒度。基于图像的颗粒分割方法被广泛采用,但在岩石紧密连接和重叠的情况下,分割效果并不理想。本研究从深度学习的角度出发,采用一种新的Mask R-CNN模型,开发了一种堆石料PSD的自动测量方法。模型训练采用中国丰光RFC大坝堆石场现场拍摄的照片进行。模型训练结果与人工测量结果吻合较好,证明了掩模R-CNN在工程实践中是一种有效的自动估计堆石料PSD的技术。
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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