Identification and analysis of seashells in sea sand using computer vision and machine learning
Due to the shortage and high price of river sand, the use of sea sand as a fine aggregate for concrete is gradually being considered. Seashells are fragile and have an undesirable effect on the compressive strength of concrete. However, the exact effect of seashells is still unclear and quality cont...
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sg-ntu-dr.10356-1696912023-08-04T15:40:00Z Identification and analysis of seashells in sea sand using computer vision and machine learning Liu, Tiejun Ju, Yutong Lyu, Hanxiong Zhuo, Qinglin Qian, Hanjie Li, Ye School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Seashell Machine Learning Due to the shortage and high price of river sand, the use of sea sand as a fine aggregate for concrete is gradually being considered. Seashells are fragile and have an undesirable effect on the compressive strength of concrete. However, the exact effect of seashells is still unclear and quality control of concrete is not possible since there are no effective methods for seashell characterization. In this study, we investigated the feasibility of segmenting photos of sea sand and analyzing seashells by using three typical machine learning methods, i.e., PointRend, DeepLab v3 +, and Weka. A new imaging method was proposed to avoid overlapping sea sand particles and preserve the smallest particles with sufficient resolution. A total of 960 photos were captured, and 2199 seashells were labeled, of which 80% and 20% were used for model training and validation, respectively. As a result, PointRend could efficiently recognize seashells with different shapes, sizes, and surface textures. It also had the highest Intersection over Union (IOU) and pixel accuracy (PA) scores due to the well-defined boundaries of the seashells, followed by DeepLab v3 + and Weka. From the segmentation results, the size of the seashells showed a left-skewed distribution with a mean diameter of 0.747 mm, which was smaller than the size of the sea sand. There was also considerable variation in the irregularity and roundness of the seashells. As the size of the seashells increased, their shapes became more irregular. The automated analysis of the seashells can provide further insights into the effect of shells on the properties of concrete. Published version This work was supported by the National Science Fund for Distinguished Young Scholars (No. 52025081), Shenzhen Science and Technology Program (No. KQTD20210811090112003), Shenzhen Science and Technology Program (GXWD20220817143919002), Shenzhen Science and Technology Program (No. RCYX20200714114525013). and Open Funding of State Key Laboratory of High Performance Civil Engineering Materials (2021CEM006). 2023-07-31T05:30:50Z 2023-07-31T05:30:50Z 2023 Journal Article Liu, T., Ju, Y., Lyu, H., Zhuo, Q., Qian, H. & Li, Y. (2023). Identification and analysis of seashells in sea sand using computer vision and machine learning. Case Studies in Construction Materials, 18, e02121-. https://dx.doi.org/10.1016/j.cscm.2023.e02121 2214-5095 https://hdl.handle.net/10356/169691 10.1016/j.cscm.2023.e02121 2-s2.0-85158850259 18 e02121 en Case Studies in Construction Materials © 2023 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). application/pdf |
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Engineering::Electrical and electronic engineering Seashell Machine Learning Liu, Tiejun Ju, Yutong Lyu, Hanxiong Zhuo, Qinglin Qian, Hanjie Li, Ye Identification and analysis of seashells in sea sand using computer vision and machine learning |
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Due to the shortage and high price of river sand, the use of sea sand as a fine aggregate for concrete is gradually being considered. Seashells are fragile and have an undesirable effect on the compressive strength of concrete. However, the exact effect of seashells is still unclear and quality control of concrete is not possible since there are no effective methods for seashell characterization. In this study, we investigated the feasibility of segmenting photos of sea sand and analyzing seashells by using three typical machine learning methods, i.e., PointRend, DeepLab v3 +, and Weka. A new imaging method was proposed to avoid overlapping sea sand particles and preserve the smallest particles with sufficient resolution. A total of 960 photos were captured, and 2199 seashells were labeled, of which 80% and 20% were used for model training and validation, respectively. As a result, PointRend could efficiently recognize seashells with different shapes, sizes, and surface textures. It also had the highest Intersection over Union (IOU) and pixel accuracy (PA) scores due to the well-defined boundaries of the seashells, followed by DeepLab v3 + and Weka. From the segmentation results, the size of the seashells showed a left-skewed distribution with a mean diameter of 0.747 mm, which was smaller than the size of the sea sand. There was also considerable variation in the irregularity and roundness of the seashells. As the size of the seashells increased, their shapes became more irregular. The automated analysis of the seashells can provide further insights into the effect of shells on the properties of concrete. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Liu, Tiejun Ju, Yutong Lyu, Hanxiong Zhuo, Qinglin Qian, Hanjie Li, Ye |
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Article |
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Liu, Tiejun Ju, Yutong Lyu, Hanxiong Zhuo, Qinglin Qian, Hanjie Li, Ye |
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Liu, Tiejun |
title |
Identification and analysis of seashells in sea sand using computer vision and machine learning |
title_short |
Identification and analysis of seashells in sea sand using computer vision and machine learning |
title_full |
Identification and analysis of seashells in sea sand using computer vision and machine learning |
title_fullStr |
Identification and analysis of seashells in sea sand using computer vision and machine learning |
title_full_unstemmed |
Identification and analysis of seashells in sea sand using computer vision and machine learning |
title_sort |
identification and analysis of seashells in sea sand using computer vision and machine learning |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/169691 |
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