Foreground Extraction Algorithm for Monocotyledonous Plants based on CNN and CRF

Sang-Wook Lee, Jun-Sik Kim
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Abstract

We aim at developing a foreground extraction method for automatic leaf identification in a monocotyledon image. In order to identify accurately all leaves in a two-dimensional plant image, it is critical to extract an exact plant region because accidental holes or breaks in the extracted foreground image may lead to wrong structural results in subsequent analysis steps. However, because monocotyledonous plants such as rice, wheat, and barley have many thin leaves and complex morphology, it is highly possible that their plant images have a lot of holes by self-occlusion between the leaves or by color change and image blurring. In addition, plant images usually have extremely thin regions caused by its thin shape. We propose a foreground extraction algorithm based on a fully convolutional neural network (CNN) and a dense conditional random field (CRF) to retain holes and breaks made by morphological characteristics of monocotyledonous plants and to eliminate the accidental holes and breaks. In our algorithm, a CNN plays a role in labeling pixels as foreground or not and a CRF strengthens connection between foreground pixels. By synergistic integration of both models, our proposed algorithm achieve a better foreground extraction accuracy for plant images. Experiments show that our proposed method effectively extracts foreground regions from a single 2-dimensional monocotyledonous plant image and is fast enough for high-throughput phenotyping.
基于CNN和CRF的单子叶植物前景提取算法
研究了一种用于单子叶植物叶片自动识别的前景提取方法。为了准确识别二维植物图像中的所有叶片,提取精确的植物区域至关重要,因为提取的前景图像中偶然出现的孔或断裂可能导致后续分析步骤中错误的结构结果。然而,由于水稻、小麦、大麦等单子叶植物叶片较薄,形态复杂,叶片之间的自遮挡或颜色变化、图像模糊,使其植物图像极有可能出现大量空洞。此外,植物图像由于其薄的形状,通常有非常薄的区域。提出了一种基于全卷积神经网络(CNN)和密集条件随机场(CRF)的前景提取算法,以保留单子叶植物形态特征造成的孔洞和断裂,并消除偶然的孔洞和断裂。在我们的算法中,CNN起着标记像素是否为前景的作用,CRF加强了前景像素之间的联系。通过两种模型的协同集成,我们提出的算法获得了更好的植物图像前景提取精度。实验表明,该方法可以有效地从单张二维单子叶植物图像中提取前景区域,并且速度足够快,可以进行高通量表型分析。
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