苹果计数使用卷积神经网络

Nicolai Häni, Pravakar Roy, Volkan Isler
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引用次数: 23

摘要

从现实世界环境(如果园)的图像中估计准确可靠的水果和蔬菜数量是一个具有挑战性的问题,最近受到了极大的关注。收获前估算水果数量为物流规划提供了有用的信息。虽然在水果检测方面取得了相当大的进展,但估计实际数量仍然具有挑战性。在实践中,水果通常是簇拥在一起的。因此,仅检测水果的方法不能提供估计准确水果数量的一般解决方案。此外,在园艺研究中,需要的不是单一的产量估计,而是更精细的信息,如每簇苹果数量的分布。在这项工作中,我们将从图像中计算水果作为一个多类分类问题,并通过训练卷积神经网络来解决它。我们首先评估了我们方法的每幅图像精度,并将其与基于高斯混合模型的最先进方法在四个测试数据集上进行了比较。尽管基于高斯混合模型的方法的参数针对每个数据集进行了专门调整,但我们的网络在四个数据集中的三个中表现优于它,准确率最高为94%。接下来,我们使用该方法来估计两个数据集的产量,我们有基本的真理。我们的方法达到了96-97%的准确率。欲了解更多详情,请参阅我们的视频:https://www.youtube.com/watch?v=Le0mb5P-SYc。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Apple Counting using Convolutional Neural Networks
Estimating accurate and reliable fruit and vegetable counts from images in real-world settings, such as orchards, is a challenging problem that has received significant recent attention. Estimating fruit counts before harvest provides useful information for logistics planning. While considerable progress has been made toward fruit detection, estimating the actual counts remains challenging. In practice, fruits are often clustered together. Therefore, methods that only detect fruits fail to offer general solutions to estimate accurate fruit counts. Furthermore, in horticultural studies, rather than a single yield estimate, finer information such as the distribution of the number of apples per cluster is desirable. In this work, we formulate fruit counting from images as a multi-class classification problem and solve it by training a Convolutional Neural Network. We first evaluate the per-image accuracy of our method and compare it with a state of the art method based on Gaussian Mixture Models over four test datasets. Even though the parameters of the Gaussian Mixture Model based method are specifically tuned for each dataset, our network outperforms it in three out of four datasets with a maximum of 94% accuracy. Next, we use the method to estimate the yield for two datasets for which we have ground truth. Our method achieved 96-97% accuracies. For additional details please see our video here: https://www.youtube.com/watch?v=Le0mb5P-SYc.
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