边缘不清晰的物体分割,应用于植被航拍图像

Katherine James, K. Bradshaw
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引用次数: 2

摘要

图像分割蒙版创建依赖于具有明显边缘的对象。虽然在许多图像分割挑战中看到的对象可能是正确的,但在处理诸如航空图像中植被分割之类的任务时就不那么重要了。这样的数据集包含不清晰的边缘,或者边缘的混合信息区域,这在边缘像素上引入了一定程度的注释者主观性。现有的损失函数对标注置信度低和标注置信度高的像素点都具有相同的学习能力。在本文中,我们提出了一种基于权重映射的损失函数,该函数通过降低这些像素对整体损失的贡献权重来考虑对象边缘注释的低置信度。我们研究了不同的权重图设计,以便在应用于植被航空图像数据集时找到最优的权重图,并将特定的灌木属从其他土地覆盖类型中分割出来。当与逆类频率加权的二元交叉熵损失进行比较时,我们发现使用基于权重图的损失产生了比二元交叉熵损失更好的模型,将F1分数提高了4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmenting objects with indistinct edges, with application to aerial imagery of vegetation
Image segmentation mask creation relies on objects having distinct edges. While this may be true for the objects seen in many image segmentation challenges, it is less so when approaching tasks such as segmentation of vegetation in aerial imagery. Such datasets contain indistinct edges, or areas of mixed information at edges, which introduces a level of annotator subjectivity at edge pixels. Existing loss functions apply equal learning ability to both these pixels of low and high annotation confidence. In this paper, we propose a weight map based loss function that takes into account low confidence in the annotation at edges of objects by down-weighting the contribution of these pixels to the overall loss. We examine different weight map designs to find the most optimal one when applied to a dataset of aerial imagery of vegetation, with the task of segmenting a particular genus of shrub from other land cover types. When compared to inverse class frequency weighted binary cross-entropy loss, we found that using weight map based loss produced a better performing model than binary cross-entropy loss, improving F1 score by 4%.
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