论文标题
使用自动迭代训练方法来最大程度地减少树骨架分割的标签工作
Minimizing Labeling Effort for Tree Skeleton Segmentation using an Automated Iterative Training Methodology
论文作者
论文摘要
对语义分割的卷积神经网络的培训需要精确的像素标签,这需要大量的人为努力。人类在循环的方法减少了标签工作;但是,它需要每个图像的人类干预。本文介绍了一种通用语义分割的一般迭代培训方法,即自动化环。这旨在通过自动化的过程复制人类在循环方法的手动调整,从而大大减少标签工作。利用检测部分遮挡的苹果树分割的应用,我们将手动标记的注释,自我训练,人类在环上以及自动化的循环方法中,以训练有素的卷积神经网络的质量以及创建它们所需的努力。使用传统指标和新的度量,完整的网格扫描来分析卷积神经网络(U-NET)的性能,从而促进连通性和低噪声。结果表明,在我们的应用程序中,新的自动化循环方法大大降低了标签工作,同时产生与人类融合和完整的手动标签方法的可比性能。
Training of convolutional neural networks for semantic segmentation requires accurate pixel-wise labeling which requires large amounts of human effort. The human-in-the-loop method reduces labeling effort; however, it requires human intervention for each image. This paper describes a general iterative training methodology for semantic segmentation, Automating-the-Loop. This aims to replicate the manual adjustments of the human-in-the-loop method with an automated process, hence, drastically reducing labeling effort. Using the application of detecting partially occluded apple tree segmentation, we compare manually labeled annotations, self-training, human-in-the-loop, and Automating-the-Loop methods in both the quality of the trained convolutional neural networks, and the effort needed to create them. The convolutional neural network (U-Net) performance is analyzed using traditional metrics and a new metric, Complete Grid Scan, which promotes connectivity and low noise. It is shown that in our application, the new Automating-the-Loop method greatly reduces the labeling effort while producing comparable performance to both human-in-the-loop and complete manual labeling methods.