29 1A Greedy Algorithm for Highlighting of Color Dominance in Tomato Leaves and Fruit Segmentation 
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Computación y Sistemas

 ISSN 2007-9737 ISSN 1405-5546

PLATAS-CAMPERO, Edgar Gilberto; DIAZ-HERNANDEZ, Raquel    ALTAMIRANO-ROBLES, Leopoldo. Lesion Labeling Analysis in LR Assisted by SAM-DR and Segmentation with YOLO v8-obb. Comp. y Sist. []. 2025, 29, 1, pp.205-216.   05--2025. ISSN 2007-9737.  https://doi.org/10.13053/cys-29-1-5436.

Leukemic retinopathy (LR) presents significant challenges in automated diagnosis due to the scarcity of accurately labeled images. This work addresses these challenges through deep learning techniques, utilizing models such as You Only Look Once (YOLO) for lesion detection and the Segment Anything Model (SAM) for automatic labeling. The results show that the Segment Anything Model-Diabetic Retinopathy (SAM-DR) outperforms manual labeling, especially in detecting Hemorrhages (HE), with an mAP50 of 0.804. Furthermore, the comparison between transfer learning (TL) and dual transfer learning (DTL) reveals that DTL improves lesion detection across all classes. This automated approach not only enhances accuracy in lesion segmentation but also serves as a valuable asset in scenarios where specialist labeling is limited and data is scarce, enabling effective leveraging and transfer of acquired knowledge to similar pathologies.

: Leukemic retinopathy; diabetic retinopathy; YOLO; SAM; dual transfer learning.

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