Vision-Based Apple Counting and Yield Estimation.

Springer Proceedings in Advanced Robotics(2017)

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摘要
We present a novel method for yield estimation in apple orchards. Our method takes segmented and registered images of apple clusters as input. It outputs number and location of individual apples in each cluster. Our primary technical contributions are a representation based on a mixture of Gaussians, and a novel selection criterion to choose the number of components in the mixture. The method is experimentally verified on four different datasets using images acquired by a vision platform mounted on an aerial robot, a ground vehicle and a hand-held device. The accuracy of the counting algorithm itself is 91%. It achieves 81-85% accuracy coupled with segmentation and registration which is significantly higher than existing image based methods.
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关键词
Expectation Maximization, Gaussian Mixture Model, Apple Orchard, Minimum Description Length, Greedy Method
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