Computer vision by unsupervised machine learning in seed drying process

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Abstract

Analyzing the impact of harvest-time drying data is crucial for successful storage and maintaining regulatory seed quality. This study aimed to assess the performance of fixed and mobile dryers using machine learning techniques. Data were collected from convective dryers, including the total number of dryers used, drying time (in hours), moisture percentages at the product’s entrance and exit, and the humidity difference between them. The study employed the Filtered Clusterer model, which utilizes the Simple K-Means technique and the Resample filter to group data based on similarities. The findings indicated distinct differences between fixed and mobile drying systems, with well-defined variations within each system. The algorithm, combined with the applied filters, proved effective in unsupervised classification by identifying and reducing inter-cluster similarity within the fixed system, thereby creating distinct classes within the dataset. In conclusion, the algorithm successfully clustered the scattered dataset and accurately classified and minimized inter-cluster similarity within the fixed system. Conversely, the mobile system exhibited low drying efficiency.

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APA

Pinheiro, R. de M., Gadotti, G. I., Bernardy, R., Tim, R. R., Pinto, K. V. A., & Buck, G. (2023). Computer vision by unsupervised machine learning in seed drying process. Ciencia e Agrotecnologia, 47. https://doi.org/10.1590/1413-7054202347018922

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