Organoleptic damage classification of potatoes with the use of image analysis in production process

In the agro-food sector security it is required the safety of a healthy food. Therefore, the farms are inspected by the quality standards of production in all sectors of production. Farms must meet the requirements dictated by the legal regulations in force in the European Union. Currently, manufacturers are seeking to make their food products have become unbeatable. This gives you the chance to form their own brand on the market. In addition, they use technologies that can increase the scale of production. Moreover, in the manufacturing process they tend to maintain a high level of quality of their products. Potatoes may be included in this group of agricultural products. Potatoes have become one of the major and popular edible plants. Globally, potatoes are used for consumption at 60%, Poland 40%. This is due to primarily advantages, consumer and nutritional qualities. Potatoes are easy to digest. Medium sized potato bigger than 60 mm in diameter contains only about 60 calories and very little fat. Moreover, it is the source of many vitamins such as vitamin C, vitamin B1, vitamin B2, vitamin E, etc. [1]. The parameters of quality consumer form, called organoleptic sensory properties, are evaluated by means of sensory organs by using the point method. The most important are: flavor, flesh color, darkening of the tuber flesh when raw and after cooking. In the production process it is important to adequate, relevant and accurate preparing potatoes for use and sale. Evaluation of the quality of potatoes is determined on the basis of organoleptic quality standards for potatoes. Therefore, there is a need to automate this process. To do this, use the appropriate tools, image analysis and classification models using artificial neural networks that will help assess the quality of potatoes [2, 3, 4].

[1]  Piotr Boniecki,et al.  The concept of artificial neural networks application in the process of evaluation of the quality of tomatoes. , 2011 .

[2]  Piotr Boniecki,et al.  Identification process of corn and barley kernel damages using neural image analysis , 2011, International Conference on Digital Image Processing.

[3]  J P Steyer,et al.  Modelling of organic matter dynamics during the composting process. , 2012, Waste management.

[4]  Piotr Boniecki,et al.  Image analysis and neural networks in the process of identifying of selected mechanical damage to maize caryopses. , 2011 .

[5]  Krzysztof Koszela CLASSIFICATION OF DRIED PARSNIP USING ARTIFICIAL NEURAL NETWORKS , 2012 .

[6]  Jacek Dach,et al.  Neural image analysis in process of compost quality identification. , 2009 .

[7]  Maciej Zaborowicz,et al.  Computer system PiAO as a tool for processing and gathering digital images in a process of generating learning sets used for construction of models of artificial neural networks. , 2010 .

[8]  Zakład Agronomii Ziemniaka,et al.  POTATO CULTIVATION IN ECOLOGICAL SYSTEM IS A CHANCE FOR SMALL AND MEDIUM FARMS , 2007 .

[9]  P. Boniecki,et al.  Neural prediction of heat loss in the pig manure composting process , 2013 .

[10]  Piotr Boniecki,et al.  Classification of selected apples varieties and dried carrots using neural network type Kohonen. , 2010 .

[11]  Piotr Boniecki,et al.  Identification of selected apple pests based on selected graphical parameters , 2013, Other Conferences.

[12]  Piotr Boniecki,et al.  The application of the Kohonen neural network in the nonparametric-quality-based classification of tomatoes , 2012, Digital Image Processing.