果园
均方误差
背景(考古学)
人工智能
计算机视觉
像素
立体视
计算机科学
失真(音乐)
视野
数学
遥感
统计
地理
生物
园艺
考古
放大器
带宽(计算)
计算机网络
作者
Chiranjivi Neupane,Anand Koirala,Zhenglin Wang,Kerry B. Walsh
出处
期刊:Agronomy
[MDPI AG]
日期:2021-09-05
卷期号:11 (9): 1780-1780
被引量:51
标识
DOI:10.3390/agronomy11091780
摘要
Eight depth cameras varying in operational principle (stereoscopy: ZED, ZED2, OAK-D; IR active stereoscopy: Real Sense D435; time of flight (ToF): Real Sense L515, Kinect v2, Blaze 101, Azure Kinect) were compared in context of use for in-orchard fruit localization and sizing. For this application, a specification on bias-corrected root mean square error of 20 mm for a camera-to-fruit distance of 2 m and operation under sunlit field conditions was set. The ToF cameras achieved the measurement specification, with a recommendation for use of Blaze 101 or Azure Kinect made in terms of operation in sunlight and in orchard conditions. For a camera-to-fruit distance of 1.5 m in sunlight, the Azure Kinect measurement achieved an RMSE of 6 mm, a bias of 17 mm, an SD of 2 mm and a fill rate of 100% for depth values of a central 50 × 50 pixels group. To enable inter-study comparisons, it is recommended that future assessments of depth cameras for this application should include estimation of a bias-corrected RMSE and estimation of bias on estimated camera-to-fruit distances at 50 cm intervals to 3 m, under both artificial light and sunlight, with characterization of image distortion and estimation of fill rate.
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