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| Title: | Automatic white shrimp (Penaeus vannamei) biometrical analysis from laboratory images using computer vision and deep learning | Authors: | Abiam, Remache Gonzalez Meriem, Chagour Timon, Bijan Ruth Raul, Trapiella Canedo Marina, Martinez Soler Alvaro, Lorenzo Felipe Hyun-Suk, Shin Maria-Jesus, Zamorano Serrano Ricardo, Torres Juan-Antonio, Castillo Parra Eduardo, Reyes Abad Ferrer Ballester, Miguel Ángel Afonso López, Juan Manuel Hernández Tejera, Francisco Mario Penate-Sanchez, Adrian |
UNESCO Clasification: | Investigación | Keywords: | Shrimp Size Estimation Penaeus Vannamei Genetic Assessment Pose Estimation Computer Vision, et al |
Issue Date: | 2026 | Journal: | Engineering Applications of Artificial Intelligence | Abstract: | Manual morphological analysis for genetic selection in Penaeus vannamei aquaculture is a slow, error-prone bottleneck. We introduce Imashrimp, an automated system that uses colour and depth images to optimize this task by adapting deep learning and computer vision techniques to shrimp morphology. Imashrimp incorporates two discrimination modules to classify images by the point of view and determine rostrum integrity. These modules function as a "two-factor authentication" (human and Artificial Intelligence) system to validate annotations; this approach reduced metadata annotation errors, cutting point of view classification errors from 0.64% to 0% and rostrum integrity errors from 10.44% to 1.04%. A transformer-based pose estimation module predicts 23 keypoints on the shrimp's skeleton, achieving a general Mean Average Precision of 96.84% and a Percentage of Correct Keypoints of 91.67%. The resulting Two-Dimensional measurements are transformed into Three-Dimensional measurements using a Support Vector Machine regression. By achieving a final Mean Absolute Error (MAE) of 0.08 +/- 0.25 cm, IMASHRIMP demonstrates the potential to automate and accelerate shrimp morphological analysis, enhancing the efficiency of genetic selection and contributing to more sustainable aquaculture practices. | URI: | https://accedacris.ulpgc.es/jspui/handle/10553/154922 | ISSN: | 0952-1976 | DOI: | 10.1016/j.engappai.2025.113493 | Source: | Engineering Applications Of Artificial Intelligence[ISSN 0952-1976],v. 165, (Febrero 2026) |
| Appears in Collections: | Artículos |
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