论文标题
复杂果园环境的基于光流的分支分割
Optical flow-based branch segmentation for complex orchard environments
论文作者
论文摘要
机器视觉是使机器人能够在果园环境中执行各种任务的关键子系统。但是,果园是高度视觉上复杂的环境,其中运行的计算机视觉算法必须能够与可变的照明条件和背景噪声抗衡。过去的关于使深度学习算法在这些环境中运行的工作通常需要大量的手工标记的数据来训练深度神经网络或物理控制环境所感知的条件。在本文中,我们仅使用模拟的RGB数据和光流训练神经网络系统。由此产生的神经网络能够在繁忙的果园环境中对分支进行前景细分,而无需进行其他现实培训或使用标准相机之外的任何特殊设置或设备。我们的结果表明,与使用手动标记的RGBD数据相比,我们的系统非常准确,并且在与训练集不同的环境中相比,实现了更加一致和稳健的性能。
Machine vision is a critical subsystem for enabling robots to be able to perform a variety of tasks in orchard environments. However, orchards are highly visually complex environments, and computer vision algorithms operating in them must be able to contend with variable lighting conditions and background noise. Past work on enabling deep learning algorithms to operate in these environments has typically required large amounts of hand-labeled data to train a deep neural network or physically controlling the conditions under which the environment is perceived. In this paper, we train a neural network system in simulation only using simulated RGB data and optical flow. This resulting neural network is able to perform foreground segmentation of branches in a busy orchard environment without additional real-world training or using any special setup or equipment beyond a standard camera. Our results show that our system is highly accurate and, when compared to a network using manually labeled RGBD data, achieves significantly more consistent and robust performance across environments that differ from the training set.