Automated seed germination incubator for PHIL-INBRED rice seeds using arduino uno-raspberry pi 4+ integration and ORB image processing / Zeth Leandro B. Madrid, Emmanuel E. Emmanuel E. Vergara Jr, and Darvin Taghoy.
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TextPublication details: Philippines ; University of Mindanao, 2022.Description: volume 14, pages 525-541, illustrationSummary: The study focuses on developing an automated incubating system that can monitor the seed's growth and determine when it is now for transplanting into the rice paddy fields without the user's daily attention. Image processing techniques includes ORB (Oriental Fast and Rotated Brief) , HSV ( Hue, Saturation and Value), and thresholding, which are known for their object detection process. Using a raspberry pi 4, integrated into Arduino-Uno, to generate the procedures for image detection and automated incubation. The database stored five(5) images of seed per segment as trained images, while ten (10) photos were used for testing. The testing phase of the study accumulated an accuracy rate of 93.33%. This study is feasible in the field of seed germination. It can be useful for the farmers or even for those who wanted to plant inbred rice crops.
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Periodicals
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UM Digos College - LIC | Periodicals | Not for loan | Periodical Article |
Research Journal, v. 14, iss. 1, pages 525-541, 2022.
The study focuses on developing an automated incubating system that can monitor the seed's growth and determine when it is now for transplanting into the rice paddy fields without the user's daily attention. Image processing techniques includes ORB (Oriental Fast and Rotated Brief) , HSV ( Hue, Saturation and Value), and thresholding, which are known for their object detection process. Using a raspberry pi 4, integrated into Arduino-Uno, to generate the procedures for image detection and automated incubation. The database stored five(5) images of seed per segment as trained images, while ten (10) photos were used for testing. The testing phase of the study accumulated an accuracy rate of 93.33%. This study is feasible in the field of seed germination. It can be useful for the farmers or even for those who wanted to plant inbred rice crops.
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