Abstract
At present, rapid, nondestructive, and objective identification of unqualified salted sea cucumbers with excessive salt content is extremely difficult. Artificial identification is the most common method, which is based on observing sea cucumber deformation during recovery after applying-removing pressure contact. This study is aimed at simulating the artificial identification method and establishing an identification model to distinguish whether the salted sea cucumber exceeds the standard by means of machine vision and machine learning technology. The system for identification of salted sea cucumbers was established, which was used for delivering the standard and uniform pressure forces and collecting the deformation images of salted sea cucumbers during the recovery after pressure removal. Image texture features of contour variation were extracted based on histograms (HIS) and gray level cooccurrence matrix (GLCM), which were used to establish the identification model by combining general regression neural networks (GRNN) and support vector machine (SVM), respectively. Contour variation features of salted sea cucumbers were extracted using a specific algorithm to improve the accuracy and stability of the model. Then, the dimensionality reduction and fusion of the feature images were achieved. According to the results of the models, the SVM identification model integrated with GLCM (GLCM-SVM) was found to be optimal, with accuracy, sensitivity, and specificity of 100%, 100%, and 100%, respectively. In particular, the sensitivity reached 100%, demonstrating an excellent identification ability to excessively salted sea cucumbers of the optimized model. This study illustrated the potential for identification of salted sea cucumbers based on pressure contact by combining image texture of contour varying with machine learning.
Highlights
Sea cucumbers are rich in collagen, amino acids, trace elements, and a variety of bioactive substances and exhibit high medicinal value [1, 2]
The small-area removal method was used to remove a small amount of large-area noise image contour (Figure 2(f)) to obtain the final image of the region of interest (ROI) region and provide a better image environment for subsequent feature extraction
Identification of unqualified salted sea cucumbers was illustrated based on pressure contact by combining image texture of contour variation with machine learning methods
Summary
Sea cucumbers are rich in collagen, amino acids, trace elements, and a variety of bioactive substances and exhibit high medicinal value [1, 2]. Available sea cucumbers mainly include dry sea cucumbers, salted sea cucumbers, and instant sea cucumbers. Salted sea cucumbers are used as raw material for dry sea cucumbers and instant sea cucumbers and sold directly as the final product, which has a huge demand. The internal organs of fresh sea cucumbers are first removed, and they are cleaned, precooked, and salted to prepare salted sea cucumbers [7]. According to the Chinese Fisheries Industry Standard (SC/T3215-2014) regulations [8], the salt content of qualified salted sea cucumbers should be no more than 25%. With the increase in salt content, the medicinal and nutritional values of sea cucumbers are reduced [1, 9].
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