KEYWORDS: Image processing, Image analysis, Photography, Image quality, Visualization, Potassium, Life sciences, Vegetation, Chemical analysis, RGB color model
In recent years, requirements on potato tuber quality and minimization of chemical protection measures have steadily increased. Increasingly, the precautionary measures in the protection of potato during its vegetation, using the dressing of seed material, are increasingly taking place. Growing awareness of potato producers and increasingly restrictive plant protection standards force the use of new technologies. The quality of the process of applying chemicals to the surface of tubers of seed potato material affects the subsequent quantity and quality of the crop. The aim of the study was to validate the method of evaluating the quality of seed dressing coverage in the process of spraying tubers with a chemical based on computer image analysis.
This article describes data processing in neural analysis of the images of pork half carcass. Parameters of pork halfcarcass obtained from three-dimensional analysis, was processed into form of 130 files. These files has been used as learning sets for the artificial neural network simulator - STATISTICA. Next, we obtained the set of neural models from which the best was chosen. For all data processing activities in this research process were used applications developed in C # in the Visual Studio 2015 development environment.
The Web application presented here supports plant production and works with the graph database Neo4j shell to support the assessment of the condition of crops on the basis of geospatial data, including raster and vector data. The adoption of a graph database as a tool to store and manage the data, including geospatial data, is completely justified in the case of those agricultural holdings that have a wide range of types and sizes of crops. In addition, the authors tested the option of using the technology of Microsoft Cognitive Services at the level of produced application that enables an image analysis using the services provided. The presented application was designed using ASP.NET MVC technology and a wide range of leading IT tools.
The aim of the research was made the dedicated application AOTK (pol. Analiza Obrazu Trzeszczki Kopytowej) for image processing and analysis of horse navicular bone. The application was produced by using specialized software like Visual Studio 2013 and the .NET platform. To implement algorithms of image processing and analysis were used libraries of Aforge.NET. Implemented algorithms enabling accurate extraction of the characteristics of navicular bones and saving data to external files. Implemented in AOTK modules allowing the calculations of distance selected by user, preliminary assessment of conservation of structure of the examined objects. The application interface is designed in a way that ensures user the best possible view of the analyzed images.
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