Enabling Multi-Part Plant Segmentation with Instance-Level Augmentation Using Weak Annotations

Inf. Comput. Pub Date : 2023-07-03 DOI:10.3390/info14070380
Semen Mukhamadiev, S. Nesteruk, S. Illarionova, A. Somov
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引用次数: 2

Abstract

Plant segmentation is a challenging computer vision task due to plant images complexity. For many practical problems, we have to solve even more difficult tasks. We need to distinguish plant parts rather than the whole plant. The major complication of multi-part segmentation is the absence of well-annotated datasets. It is very time-consuming and expensive to annotate datasets manually on the object parts level. In this article, we propose to use weakly supervised learning for pseudo-annotation. The goal is to train a plant part segmentation model using only bounding boxes instead of fine-grained masks. We review the existing weakly supervised learning approaches and propose an efficient pipeline for agricultural domains. It is designed to resolve tight object overlappings. Our pipeline beats the baseline solution by 23% for the plant part case and by 40% for the whole plant case. Furthermore, we apply instance-level augmentation to boost model performance. The idea of this approach is to obtain a weak segmentation mask and use it for cropping objects from original images and pasting them to new backgrounds during model training. This method provides us a 55% increase in mAP compared with the baseline on object part and a 72% increase on the whole plant segmentation tasks.
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使用弱注释实现实例级增强的多部分植物分割
由于植物图像的复杂性,植物分割是一项具有挑战性的计算机视觉任务。对于许多实际问题,我们不得不解决更加困难的任务。我们需要区分植物的部分而不是整个植物。多部分分割的主要复杂性是缺乏良好注释的数据集。在对象部件级别上手动标注数据集是非常耗时和昂贵的。在本文中,我们提出将弱监督学习用于伪标注。目标是只使用边界框而不是细粒度掩模来训练植物部分分割模型。我们回顾了现有的弱监督学习方法,并提出了一种用于农业领域的有效管道。它的目的是解决紧密的对象重叠。我们的管道在工厂部分情况下比基线解决方案高出23%,在整个工厂情况下比基线解决方案高出40%。此外,我们应用实例级增强来提高模型性能。这种方法的思想是获得一个弱分割蒙版,并在模型训练期间将其用于从原始图像中裁剪对象并将其粘贴到新背景上。与基线相比,该方法在目标部分的mAP提高了55%,在整个植物分割任务上提高了72%。
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