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Comparison of feature point detectors for multimodal image registration in plant phenotyping

机译:植物表型中多式化图像配准的特征点探测器的比较

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With the introduction of multi-camera systems in modern plant phenotyping new opportunities for combined multimodal image analysis emerge. Visible light (VIS), fluorescence (FLU) and near-infrared images enable scientists to study different plant traits based on optical appearance, biochemical composition and nutrition status. A straightforward analysis of high-throughput image data is hampered by a number of natural and technical factors including large variability of plant appearance, inhomogeneous illumination, shadows and reflections in the background regions. Consequently, automated segmentation of plant images represents a big challenge and often requires an extensive human-machine interaction. Combined analysis of different image modalities may enable automatisation of plant segmentation in “difficult” image modalities such as VIS images by utilising the results of segmentation of image modalities that exhibit higher contrast between plant and background, i.e. FLU images. For efficient segmentation and detection of diverse plant structures (i.e. leaf tips, flowers), image registration techniques based on feature point (FP) matching are of particular interest. However, finding reliable feature points and point pairs for differently structured plant species in multimodal images can be challenging. To address this task in a general manner, different feature point detectors should be considered. Here, a comparison of seven different feature point detectors for automated registration of VIS and FLU plant images is performed. Our experimental results show that straightforward image registration using FP detectors is prone to errors due to too large structural difference between FLU and VIS modalities. We show that structural image enhancement such as background filtering and edge image transformation significantly improves performance of FP algorithms. To overcome the limitations of single FP detectors, combination of different FP methods is suggested. We demonstrate application of our enhanced FP approach for automated registration of a large amount of FLU/VIS images of developing plant species acquired from high-throughput phenotyping experiments.
机译:随着在现代植物中的多摄像机系统的推出,组合多媒体图像分析的新机遇出现。可见光(VIS),荧光(流感)和近红外图像使科学家能够基于光学外观,生化组成和营养状态研究不同的植物性状。对高吞吐图像数据的直接分析受到许多自然和技术因素的阻碍,包括植物外观,不均匀照明,阴影和背景区域的反射的大变异性。因此,植物图像的自动分割代表了一个大挑战,并且通常需要广泛的人机相互作用。不同图像模型的组合分析可以通过利用植物和背景之间的图像方式的分割结果,使得诸如Vis图像的“困难”图像模型中的植物分割的自动化。用于有效的分割和检测不同植物结构(即叶子提示,花),基于特征点(FP)匹配的图像登记技术特别感兴趣。然而,在多模式图像中找到用于不同结构植物物种的可靠特征点和点对可能是具有挑战性的。要以一般方式解决此任务,应考虑不同的特征点检测器。这里,执行七种不同特征点检测器的用于自动登记的七种不同特征点探测器的比较。我们的实验结果表明,由于流感和VIS模式之间的结构差异太大了,使用FP探测器的直接图像配准是易受错误的误差。我们表明,诸如背景滤波和边缘图像变换之类的结构图像增强显着提高了FP算法的性能。为了克服单个FP探测器的局限性,提出了不同FP方法的组合。我们展示了我们增强的FP方法,用于自动注册大量流感/患者的植物物种自动登记,从高通量表型实验中获得的植物物种。

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