Multi-leaf alignment from fluorescence plant images

Xi Yin, Xiaoming Liu, Jin Chen, D. Kramer
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引用次数: 27

Abstract

In this paper, we propose a multi-leaf alignment framework based on Chamfer matching to study the problem of leaf alignment from fluorescence images of plants, which will provide a leaf-level analysis of photosynthetic activities. Different from the naive procedure of aligning leaves iteratively using the Chamfer distance, the new algorithm aims to find the best alignment of multiple leaves simultaneously in an input image. We formulate an optimization problem of an objective function with three terms: the average of chamfer distances of aligned leaves, the number of leaves, and the difference between the synthesized mask by the leaf candidates and the original image mask. Gradient descent is used to minimize our objective function. A quantitative evaluation framework is also formulated to test the performance of our algorithm. Experimental results show that the proposed multi-leaf alignment optimization performs substantially better than the baseline of the Chamfer matching algorithm in terms of both accuracy and efficiency.
荧光植物图像的多叶排列
本文提出了一种基于Chamfer匹配的多叶片定位框架,用于研究植物荧光图像中叶片的定位问题,为叶片水平的光合活动分析提供依据。与传统的利用Chamfer距离迭代对齐叶子的方法不同,新算法的目标是在输入图像中同时找到多个叶子的最佳对齐方式。我们提出了一个目标函数的优化问题,该目标函数包含三个项:对齐叶片的倒角距离的平均值、叶片的数量以及候选叶片合成的掩模与原始图像掩模之间的差异。梯度下降是用来最小化我们的目标函数。此外,还制定了一个量化评估框架来测试我们的算法的性能。实验结果表明,所提出的多叶对齐优化算法在精度和效率方面都明显优于Chamfer匹配算法的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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