计算机科学
果园
人工智能
编码器
目标检测
计算机视觉
注释
特征(语言学)
模式识别(心理学)
适配器(计算)
数据挖掘
支持向量机
传感器融合
专题地图
可视化
融合
语义特征
机器学习
对象(语法)
特征提取
语义学(计算机科学)
图像融合
降噪
视觉对象识别的认知神经科学
作者
H.H. Xu,Huilin Li,Ji‐Cheng Zhao
标识
DOI:10.3389/fpls.2025.1696622
摘要
Few-shot object detection (FSOD) addresses the challenge of object recognition under limited annotation conditions, offering practical advantages for smart agriculture, where large-scale labeling of diverse fruit cultivars is often infeasible. To handle the visual complexity of orchard environments-such as occlusion, subtle morphological differences, and dense foliage-this study presents a lightweight tri-modal fusion framework. The model initially employs a CLIP-based semantic prompt encoder to extract category-aware cues, which guide the Segment Anything Model (SAM) in producing structure-preserving masks. These masks are then incorporated via a Semantic Fusion Module (SFM): a Mask-Saliency Adapter (MSA) and a Feature Enhancement Recomposer (FER), enabling spatially aligned and semantically enriched feature modulation. An Attention-Aware Weight Estimator (AWE) further optimizes the fusion by adaptively balancing semantic and visual streams using global saliency cues. The final predictions are subsequently generated by a YOLOv12 detection head. Experiments conducted on four fruit detection benchmarks-Cantaloupe.v2, Peach.v3, Watermelon.v2, and Orange.v8-demonstrate that the proposed method consistently surpasses five representative FSOD baselines. Performance improvements include +7.9% AP@0.5 on Cantaloupe.v2, +5.4% Precision on Peach.v3, +7.4% Precision on Watermelon.v2, and +5.9% AP@0.75 on Orange.v8. These results underscore the model's effectiveness in orchard-specific scenarios and its potential to facilitate cultivar identification, digital recordkeeping, and cost-efficient agricultural monitoring.
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