How to classify sand types: A deep learning approach
Citations

WEB OF SCIENCE

14
Citations

SCOPUS

1

초록

While the identification of sand type helps naturally approximate physical and mechanical properties, it is challenging to judge sand types without prior information. This study attempts to identify the sand type in 2D grayscale images by using convolutional neural networks (CNNs). Six different sand samples with high geometric similarity were selected, and individual particle images were taken. Three pretrained networks (VGGNet, ResNet, and Inception) were implemented for retraining with parameter fine-tuning. The results show that most round and irregularly shaped sands are well classified with higher accuracy than sand samples with intermediate shape parameters. Additionally, it is confirmed that the feature maps obtained from multiple layers of trained CNNs sufficiently include the image characteristics of each sand particle. Misclassified particles are mostly found where the shape parameters distributions overlap. Higher accuracy is achieved by using grayscale images for training than using binary images. It implies that a better prediction can be produced when both surface texture and boundary morphology are concurrently trained. This study suggests the strong possibility of classifying sand types and further estimating soil properties only with images.

키워드

particle shapesand particle classificationfeature mapconvolutional neural networkdeep learningNEURAL-NETWORKSPACKING DENSITYSHEAR-STRENGTHPARTICLE-SHAPECLASSIFICATIONANGULARITYROUNDNESSBEHAVIORFORM
제목
How to classify sand types: A deep learning approach
저자
Kim Y.TAE SUP YUN
DOI
10.1016/j.enggeo.2021.106142
발행일
2021-07
저널명
Engineering Geology
288
페이지
106142-1 ~ 106142-9