论文标题

植物器官计数的无监督域适应

Unsupervised Domain Adaptation For Plant Organ Counting

论文作者

Ayalew, Tewodros, Ubbens, Jordan, Stavness, Ian

论文摘要

监督学习通常用于计算图像中的对象,但是为了计算小的,密集的对象,所需的图像注释是繁重的收集。计算基于图像的植物表型的植物器官属于这一类别。由于不同的实验条件,例如应用带注释的室内植物图像的数据集用于室外图像或不同的植物物种上。在本文中,我们提出了一种针对域的域 - 交流学习方法,以针对对象计数的目的对密度图估计的域适应。该方法不假定源数据集和目标数据集之间的分布完全一致,这使其更广泛地适用于一般对象计数和植物器官计数任务。对两个不同的对象计数任务(小麦尖峰,叶子)的评估表明,在不同类别的域移位类别的目标数据集上表现出一致的性能:从室内到室外图像,从物种到物种的适应。

Supervised learning is often used to count objects in images, but for counting small, densely located objects, the required image annotations are burdensome to collect. Counting plant organs for image-based plant phenotyping falls within this category. Object counting in plant images is further challenged by having plant image datasets with significant domain shift due to different experimental conditions, e.g. applying an annotated dataset of indoor plant images for use on outdoor images, or on a different plant species. In this paper, we propose a domain-adversarial learning approach for domain adaptation of density map estimation for the purposes of object counting. The approach does not assume perfectly aligned distributions between the source and target datasets, which makes it more broadly applicable within general object counting and plant organ counting tasks. Evaluation on two diverse object counting tasks (wheat spikelets, leaves) demonstrates consistent performance on the target datasets across different classes of domain shift: from indoor-to-outdoor images and from species-to-species adaptation.

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