1. A Machine Vision System for Robust Sorting of Herring Fractions
- Author
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Erik Guttormsen, Morten Steen Bondø, John Reidar Mathiassen, Bendik Toldnes, Aleksander Eilertsen, and Jan Tommy Gravdahl
- Subjects
Milt ,biology ,Operations research ,Machine vision ,Process Chemistry and Technology ,010401 analytical chemistry ,02 engineering and technology ,Clupea ,Raw material ,biology.organism_classification ,01 natural sciences ,Industrial and Manufacturing Engineering ,0104 chemical sciences ,Separation process ,Support vector machine ,Herring ,Hyperparameter optimization ,Statistics ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Safety, Risk, Reliability and Quality ,Food Science ,Mathematics - Abstract
Among the rest raw material in herring (Clupea harengus) fractions, produced during the filleting process of herring, there are high-value products such as roe and milt. As of today, there has been little or no major effort to process these by-products in an acceptable state, except for by manual separation and mostly mixed into low-value products. Even though pure roe and milt fractions can be sold for as much as ten times the value of the mixed fractions, the separation costs using manual techniques render this economically unsustainable. Automating this separation process could potentially give the pelagic fish industry better raw material utilization and a substantial additional income. In this paper, a robust classification approach is described, which enables separation of these by-products based on their distinct reflectance features. The analysis is conducted using data from image recordings of by-products delivered by a herring processing factory. The image data is divided into three respective classes: roe, milt, and waste (other). Classifier model tuning and analysis are done using multiclass support vector machines (SVMs). A grid search and cross-validation are applied to investigate the separation of the classes. Two-class separation was possible between milt/roe and roe/waste. However, separation of milt from waste proved to be the most difficult task, but it was shown that a grid search maximizing the precision—the true positive rate of the predictions—results in a precise SVM model that also has a high recall rate for milt versus waste. This is a submitted manuscript of an article published by Springer Verlag. The final publication is available at https://link.springer.com/article/10.1007%2Fs11947-016-1774-2
- Published
- 2016