4.7 Article

Development of an Optimal Algorithm for Detecting Damaged and Diseased Potato Tubers Moving along a Conveyor Belt Using Computer Vision Systems

Journal

AGRONOMY-BASEL
Volume 11, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/agronomy11101980

Keywords

neural networks; defects detection; crop; potato disease; potato classification; fast detection; machine learning

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The article discusses the problem of detecting sick or mechanically damaged potatoes using machine learning methods. An algorithm was proposed and developed to rapidly detect damaged tubers, with the system capable of detecting up to 100 tubers in one second. The system's accuracy reaches 97% under optimal settings, with detection methods varying in outcomes from 80% to 97%.
The article discusses the problem of detecting sick or mechanically damaged potatoes using machine learning methods. We proposed an algorithm and developed a system for the rapid detection of damaged tubers. The system can be installed on a conveyor belt in a vegetable store, and it consists of a laptop computer and an action camera, synchronized with a flashlight system. The algorithm consists of two phases. The first phase uses the Viola-Jones algorithm, applied to the filtered action camera image, so it aims to detect separate potato tubers on the conveyor belt. The second phase is the application of a method that we choose based on video capturing conditions. To isolate potatoes infected with certain types of diseases (dry rot, for example), we use the Scale Invariant Feature Transform (SIFT)-Support Vector Machine (SVM) method. In case of inconsistent or weak lighting, the histogram of oriented gradients (HOG)-Bag-of-Visual-Words (BOVW)-neural network (BPNN) method is used. Otherwise, Otsu's threshold binarization-a convolutional neural network (CNN) method is used. The first phase's result depends on the conveyor's speed, the density of tubers on the conveyor, and the accuracy of the video system. With the optimal setting, the result reaches 97%. The second phase's outcome depends on the method and varies from 80% to 97%. When evaluating the performance of the system, it was found that it allows to detect and classify up to 100 tubers in one second, which significantly exceeds the performance of most similar systems.

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