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首页> 外文期刊>Computers and Electronics in Agriculture >Estimating mango crop yield using image analysis using fruit at 'stone hardening' stage and night time imaging.
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Estimating mango crop yield using image analysis using fruit at 'stone hardening' stage and night time imaging.

机译:通过使用“结石硬化”阶段的水果和夜间成像的图像分析来估计芒果作物的产量。

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摘要

This paper extends a previous study on the use of image analysis to automatically estimate mango crop yield (fruit on tree) (Payne et al., 2013). Images were acquired at night, using artificial lighting of fruit at an earlier stage of maturation ('stone hardening' stage) than for the previous study. Multiple image sets were collected during the 2011 and 2012 seasons. Despite altering the settings of the filters in the algorithm presented in the previous study (based on colour segmentation using RGB and YCbCr, and texture), the less mature fruit were poorly identified, due to a lower extent of red colouration of the skin. The algorithm was altered to reduce its dependence on colour features and to increase its use of texture filtering, hessian filtering in particular, to remove leaves, trunk and stems. Results on a calibration set of images (2011) were significantly improved, with 78.3% of fruit detected, an error rate of 10.6% and an R2 value (machine vision to manual count) of 0.63. Further application of the approach on validation sets from 2011 and 2012 had mixed results, with issues related to variation in foliage characteristics between sets. It is proposed the detection approaches within both of these algorithms be used as a 'toolkit' for a mango detection system, within an expert system that also uses user input to improve the accuracy of the system.
机译:本文扩展了以前使用图像分析来自动估计芒果作物产量(果树上)的研究(Payne等人,2013)。与以前的研究相比,在成熟的早期阶段(“结石硬化”阶段)使用水果的人工照明在夜间采集图像。在2011年和2012年季节收集了多个图像集。尽管更改了先前研究中提出的算法中的滤镜设置(基于使用RGB和YCbCr的颜色分割以及纹理),但由于皮肤红色的程度较低,因此较不成熟的水果很难识别。对该算法进行了更改,以减少对颜色特征的依赖性,并增加其对纹理过滤(尤其是粗麻布过滤)的使用,以去除叶子,树干和茎。校准图像集(2011年)的结果得到了显着改善,检测到78.3%的水果,错误率为10.6%,R 2 值(机器视觉到人工计数)为0.63。该方法在2011年和2012年的验证集上的进一步应用产生了不同的结果,其中涉及到验证集之间的叶子特征变化的问题。建议将这两种算法中的检测方法用作专家系统中的芒果检测系统的“工具箱”,该系统还使用用户输入来提高系统的准确性。

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