分割
计算机科学
人工智能
瓶颈
目标检测
机器学习
可扩展性
相关性(法律)
掷骰子
注释
图像分割
尺度空间分割
模式识别(心理学)
基于分割的对象分类
市场细分
深度学习
建筑
标记数据
数据挖掘
监督学习
对象(语法)
像素
计算机视觉
F1得分
训练集
噪音(视频)
作者
Partho Ghose,Al Bashir,Yibin Wang,Cristian Bua,Azlan Zahid
出处
期刊:Sensors
[Multidisciplinary Digital Publishing Institute]
日期:2025-12-18
卷期号:25 (24): 7678-7678
被引量:1
摘要
Traditional segmentation methods are slow and rely on manual annotations, which are labor-intensive. To address these limitations, we propose YOLO-SAM AgriScan, a unified framework that combines the fast object detection capabilities of YOLOv11 with the zero-shot segmentation power of the Segment Anything Model 2 (SAM2). Our approach adopts a hybrid paradigm for on-plant ripe strawberry segmentation, wherein YOLOv11 is fine-tuned using a few-shot learning strategy with minimal annotated samples, and SAM2 performs mask generation without additional supervision. This architecture eliminates the bottleneck of pixel-wise manual annotation and enables the scalable and efficient segmentation of strawberries in both controlled and natural farm environments. Experimental evaluations on two datasets, a custom-collected dataset and a publicly available benchmark, demonstrate strong detection and segmentation performance in both full-data and data-constrained scenarios. The proposed framework achieved a mean Dice score of 0.95 and an IoU of 0.93 on our collected dataset and maintained competitive performance on public data (Dice: 0.95, IoU: 0.92), demonstrating its robustness, generalizability, and practical relevance in real-world agricultural settings. Our results highlight the potential of combining few-shot detection and zero-shot segmentation to accelerate the development of annotation-light, intelligent phenotyping systems.
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