To optimize fruit production, a portion of the flowers and fruitlets of apple trees must be removed early in the growing season. The proportion to be removed is determined by the bloom intensity, i.e., the number of flowers present in the orchard. Several automated computer vision systems have been proposed to estimate bloom intensity, but their overall performance is still far from satisfactory even in relatively controlled environments. With the goal of devising a technique for flower identification which is robust to clutter and to changes in illumination, this paper presents a method in which a pre-trained convolutional neural network is fine-tuned to become specially sensitive to flowers. Experimental results on a challenging dataset demonstrate that our method significantly outperforms three approaches that represent the state of the art in flower detection, with recall and precision rates higher than $90\%$. Moreover, a performance assessment on three additional datasets previously unseen by the network, which consist of different flower species and were acquired under different conditions, reveals that the proposed method highly surpasses baseline approaches in terms of generalization capability.
翻译:为了优化水果生产,必须在生长季节的早期摘除一部分苹果树的花卉和水果。要去除的比例取决于花朵密集度,即果园中的花朵数量。一些自动计算机视觉系统已经提出估计花朵密集度的建议,但即使在相对受控制的环境下,其总体性能仍然远远不能令人满意。为了设计一种精细的花朵鉴别技术,以进行精细的调整,使经过训练的卷发神经网络变得对花朵特别敏感。一个具有挑战性的数据集的实验结果显示,我们的方法大大优于三种方法,这些方法代表了花朵探测中的艺术状态,召回率和精确率高于90美元。此外,对该网络以前所见的三个额外数据集的绩效评估显示,这三个数据集由不同的花种组成,在不同条件下获得,在一般化能力方面,拟议的方法远远超过基线方法。