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Main Authors: Ma, Yukun, Mao, Zikun
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.08273
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author Ma, Yukun
Mao, Zikun
author_facet Ma, Yukun
Mao, Zikun
contents In daily life and industrial production, it is crucial to accurately detect changes in liquid level in containers. Traditional contact measurement methods have some limitations, while emerging non-contact image processing technology shows good application prospects. This paper proposes a container dynamic liquid level detection model based on U^2-Net. This model uses the SAM model to generate an initial data set, and then evaluates and filters out high-quality pseudo-label images through the SemiReward framework to build an exclusive data set. The model uses U^2-Net to extract mask images of containers from the data set, and uses morphological processing to compensate for mask defects. Subsequently, the model calculates the grayscale difference between adjacent video frame images at the same position, segments the liquid level change area by setting a difference threshold, and finally uses a lightweight neural network to classify the liquid level state. This approach not only mitigates the impact of intricate surroundings, but also reduces the demand for training data, showing strong robustness and versatility. A large number of experimental results show that the proposed model can effectively detect the dynamic liquid level changes of the liquid in the container, providing a novel and efficient solution for related fields.
format Preprint
id arxiv_https___arxiv_org_abs_2403_08273
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle LiqD: A Dynamic Liquid Level Detection Model under Tricky Small Containers
Ma, Yukun
Mao, Zikun
Computer Vision and Pattern Recognition
Artificial Intelligence
I.4.6; I.5.2
In daily life and industrial production, it is crucial to accurately detect changes in liquid level in containers. Traditional contact measurement methods have some limitations, while emerging non-contact image processing technology shows good application prospects. This paper proposes a container dynamic liquid level detection model based on U^2-Net. This model uses the SAM model to generate an initial data set, and then evaluates and filters out high-quality pseudo-label images through the SemiReward framework to build an exclusive data set. The model uses U^2-Net to extract mask images of containers from the data set, and uses morphological processing to compensate for mask defects. Subsequently, the model calculates the grayscale difference between adjacent video frame images at the same position, segments the liquid level change area by setting a difference threshold, and finally uses a lightweight neural network to classify the liquid level state. This approach not only mitigates the impact of intricate surroundings, but also reduces the demand for training data, showing strong robustness and versatility. A large number of experimental results show that the proposed model can effectively detect the dynamic liquid level changes of the liquid in the container, providing a novel and efficient solution for related fields.
title LiqD: A Dynamic Liquid Level Detection Model under Tricky Small Containers
topic Computer Vision and Pattern Recognition
Artificial Intelligence
I.4.6; I.5.2
url https://arxiv.org/abs/2403.08273