论文标题
HOB-CNN:用2D果树的卷积神经网络的遮挡分支的幻觉
HOB-CNN: Hallucination of Occluded Branches with a Convolutional Neural Network for 2D Fruit Trees
论文作者
论文摘要
由于全球劳动力短缺,果园的自动化最近引起了研究人员的注意。为了使果园中的任务自动化,例如修剪,变薄和收获,需要对树结构有详细的了解。但是,叶子和果实的遮挡可能使预测被阻塞的树干和分支的位置变得具有挑战性。这项工作提出了一个基于回归的深度学习模型,即遮挡的分支卷积神经网络(HOB-CNN)的幻觉,用于在不同的封闭条件下的树枝位置预测。我们将树枝位置预测作为回归问题,沿垂直方向的分支水平位置,反之亦然。我们在Y形树上进行了比较实验,并具有两个最先进的基线,代表了解决问题的常见方法。实验表明,HOB-CNN在预测分支位置方面的基础优于基准,并表现出与遮挡水平不同的鲁棒性。我们进一步验证了Hob-CNN针对两种不同类型的2D树,Hob-CNN在不同的遮挡条件下显示了对不同树木的概括和鲁棒性。
Orchard automation has attracted the attention of researchers recently due to the shortage of global labor force. To automate tasks in orchards such as pruning, thinning, and harvesting, a detailed understanding of the tree structure is required. However, occlusions from foliage and fruits can make it challenging to predict the position of occluded trunks and branches. This work proposes a regression-based deep learning model, Hallucination of Occluded Branch Convolutional Neural Network (HOB-CNN), for tree branch position prediction in varying occluded conditions. We formulate tree branch position prediction as a regression problem towards the horizontal locations of the branch along the vertical direction or vice versa. We present comparative experiments on Y-shaped trees with two state-of-the-art baselines, representing common approaches to the problem. Experiments show that HOB-CNN outperform the baselines at predicting branch position and shows robustness against varying levels of occlusion. We further validated HOB-CNN against two different types of 2D trees, and HOB-CNN shows generalization across different trees and robustness under different occluded conditions.