Crop Classification and LAI Estimation Using Original and Resolution-Reduced Images from Two Consumer-Grade Cameras
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Chenghai Yang | Jian Zhang | Dongyan Zhang | Yeyin Shi | Huaibo Song | Guozhong Zhang | Wesley Clint Hoffmann | W. C. Hoffmann | Biquan Zhao | Chenghai Yang | Dongyan Zhang | Yeyin Shi | Biquan Zhao | Jian Zhang | Huaibo Song | Guozhong Zhang | Guozhong Zhang
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