Optimization of the YOLOv7 Object Detection Algorithm for Estimating the Amount of Apple Harvest

Authors

  • Verry Riyanto Universitas Bina Sarana Informatika
  • Imam Nawawi Universitas Bina Sarana Informatika
  • Ridwansyah Ridwansyah Universitas Nusa Mandiri
  • Ganda Wijaya Universitas Nusa Mandiri
  • Toto Haryanto Institute Pertanian Bogor

DOI:

https://doi.org/10.31294/p.v25i1.1809

Keywords:

Harvest, Apple, Yolo, Image Processing

Abstract

The increasing population consumed in high production and food needs for survival. Apples are one of the crop harvest products in Indonesia whose needs are increasing, because they are not only needed for human vitamins but can be used as hand fruit or a form of gratitude to those who receive the fruit. In the process of harvesting apples in agricultural land, harvesting is often found which is not feasible in the hands of consumers because it takes too long for apples to not be harvested when the condition of the fruit is feasible in maturity. Therefore, the authors approach this problem by processing the image results obtained to form a detection model, whether the apples are said to be feasible to be harvested immediately and from the image results it can also be calculated the number of fruits captured by the image model , feature enhancements Estimates on objects from this image model are expected to provide more timely harvest predictions in order to provide longer aging of apples and good fruit quality after reaching consumers

Author Biographies

Verry Riyanto, Universitas Bina Sarana Informatika

 

 

Imam Nawawi, Universitas Bina Sarana Informatika

 

 

Ridwansyah Ridwansyah, Universitas Nusa Mandiri

 

 

Ganda Wijaya, Universitas Nusa Mandiri

 

 

Toto Haryanto, Institute Pertanian Bogor

 

 

References

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Published

2023-03-29

How to Cite

Riyanto, V., Nawawi, I., Ridwansyah, R., Wijaya, G., & Haryanto, T. (2023). Optimization of the YOLOv7 Object Detection Algorithm for Estimating the Amount of Apple Harvest. Paradigma, 25(1). https://doi.org/10.31294/p.v25i1.1809