2026-05-28

【學術亮點】基於特徵調適的無標註深度學習於小樣本作物異常檢測之研究

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Intelligent Service: Large-scale Agricultural AI Models
Department of Civil Engineering / Ming-Der Yang / Tenured Distinguished Professor
智慧服務:可大規模擴展之農業AI 模型【土木工程學系楊明德終身特聘教授】
論文篇名 英文:Label-Free Deep Learning with Feature Adaptation for Crop Anomaly Detection on Small Datasets
中文:基於特徵調適的無標註深度學習於小樣本作物異常檢測之研究
期刊名稱 Agriculture-Basel
發表年份, 卷數, 起迄頁數 2026,16(8), no.854
作者 Ming-Der Yang(楊明德), Tzu-Han Lee, Hsin-Hung Tseng*, Tzu-Han Lee(蘇東青), Yu-Chun Hsu(許鈺群)
DOI 10.3390/agriculture16080854
中文摘要 高效率的作物健康監測對全球糧食安全至關重要。由於缺乏大型標註資料集,監督式深度學習方法往往難以實際應用。為了克服這一局限性,本研究將最初為工業檢測設計的無監督、無標籤異常檢測框架 EfficientAD 應用於小型資料集上的農業影像。此方法利用區塊描述網路 (PDN) 進行局部特徵提取,利用學生網路偵測局部異常,並利用自編碼器進行全局結構約束。與 AnoGAN、Pix2Pix、InTra 和 Teacher-Student 模型相比,該框架在 MVTec AD、PlantVillage、Coffee Leaf 以及自訂的真實世界甘藷資料集上均表現出優異的效能。該模型在「Pongamia」、「Potato」和「Coffee Leaf」等類別中實現了高達 100% 的受試者工作特徵曲線下面積 (AUROC) 得分。儘管影像級分類表現出極強的穩健性,但像素級定位(AUPRO)對複雜的農業背景較為敏感。為了克服這個問題,我們對自訂資料集進行了背景干擾分析,採用了背景移除(BGRM)和分佈外背景替換-綠色(BGRP-G)策略。值得注意的是,BGRP-G策略大幅提升了影像級AUROC值,從88.9%提高到99.5%,並將像素級AUPRO值從47.1%大幅提升至61.9%,成功保留了嚴重結構缺陷的邊界完整性。此改進的無標籤框架無需複雜的數據增強即可實現毫秒級延遲,為資源受限的邊緣AI設備上的作物健康即時診斷提供了一種靈活高效的解決方案。
英文摘要
Efficient crop health monitoring is crucial for global food security. Supervised deep learning approaches are often impractical due to the scarcity of large, labeled datasets. To address this limitation, this study adapts EfficientAD, an unsupervised, label-free anomaly detection framework originally designed for industrial inspection, for agricultural imagery on small datasets. The method utilizes a Patch Description Network (PDN) for localized feature extraction, a student network for local anomalies, and an autoencoder for global structural constraints. Benchmarked against AnoGAN, Pix2Pix, InTra, and Teacher–Student models, the framework demonstrated superior performance on the MVTec AD, PlantVillage, Coffee Leaf, and a custom real-world Sweet Potato dataset. The model achieved perfect area under the receiver operating characteristic curve (AUROC) scores of up to 100% in categories like “Pongamia”, “Potato”, and “Coffee Leaf”. While image-level classification was exceptionally robust, pixel-level localization (AUPRO) proved sensitive to complex agricultural backgrounds. To overcome this, a background interference analysis was conducted using Background Removed (BGRM) and out-of-distribution Background Replaced-Green (BGRP-G) strategies on the custom dataset. Notably, the BGRP-G strategy remarkably improved the image-level AUROC from 88.9% to 99.5% and substantially boosted the pixel-level AUPRO from 47.1% to 61.9%, successfully preserving the boundary integrity of severe structural defects. Achieving millisecond-level latency without complex data augmentation, this adapted label-free framework offers a versatile, highly efficient solution for real-time crop health diagnostics on resource-constrained Edge AI devices.
發表成果與AI計畫研究主題相關性 改進的無標籤框架無需複雜的數據增強即可實現毫秒級延遲,為資源受限的邊緣AI設備上的作物健康即時診斷提供了一種靈活高效的解決方案。
上架日期2026-04-12
 
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