Repository logo
Andean Publishing ↗
New user? Click here to register. Have you forgotten your password?
  1. Home
  2. Browse by Author

Browsing by Autor "David Pozo"

Filter results by typing the first few letters
Now showing 1 - 2 of 2
  • Results Per Page
  • Sort Options
  • Loading...
    Thumbnail Image
    Item type: Item ,
    Clinical impact of High-Definition Endoscopic Ultrasonography (EUS) in a district hospital
    (Arán Ediciones, 2010) Elvira Poves; David Pozo; Susana Tabernero; A. Bardina; P Martínez; M. C. Castillo
    EUS is a growing demand technique that has low risks and leads to better decision-making in a significant number of patients with different diseases. Therefore, its inclusion in routine clinical practice must be considered.
  • Loading...
    Thumbnail Image
    Item type: Item ,
    Tomato classification with YOLOv8: Enhancing automated sorting and quality assessment
    (2025) Viviana Moya; Michael Guerra; Karina Pazmiño; Faruk Abedrabbo; Fernando A. Chicaiza; David Pozo
    This study presents the design and implementation of an automated system for sorting and measuring kidney tomatoes using a YOLOv8 model with a size estimation algorithm. The proposed system integrates computer vision and deep learning with a physical sorting mechanism to categorize tomatoes into three classes: green, red, and damaged, while also determining their size. The classification model was trained on a dataset of 2,145 images of tomatoes taken from different sources and lighting conditions to enhance performance during training. The implemented prototype consists of a conveyor belt equipped with sensors and a high-resolution camera to capture and analyse tomato characteristics in real-time. A servo-driven sorting mechanism then directs the classified tomatoes into their respective bins. Experimental validation and testing show that the model achieves a classification accuracy of 99.6% and a size estimation accuracy of 97.1%, aiding in a reliable and efficient post-harvest sorting process. The proposed system not only reduces the probability of human error but also improves the precision of tomato classification. Future developments will focus on refining and adapting existing AI methodologies to improve their effectiveness in agricultural environments. This includes enhancing model robustness, improving classification accuracy under real-world conditions, and tailoring AI tools to better meet the demands of industrial tomato sorting. • An automated system uses YOLOv8 to classify and sort kidney tomatoes efficiently. • The model achieves 99.6% classification and 97.1 • Computer vision with a sorting mechanism automates tomato classification. • A servo mechanism sorts tomatoes into bins, reducing errors and boosting efficiency. • The system has a conveyor, sensors, and a high resolution camera for real-time analysis.

Andean Library © 2026 · Andean Publishing

  • Accessibility settings
  • Privacy policy
  • End User Agreement
  • Send Feedback