IEEE Trans Image Process. 2021;30:4883-4893. doi: 10.1109/TIP.2021.3069578. Epub 2021 May 11.
Plant roots are the main conduit to its interaction with the physical and biological environment. A 3D root system architecture can provide fundamental and applied knowledge of a plant's ability to thrive, but the construction of 3D structures for thin and complicated plant roots is challenging. Existing methods such as structure-from-motion and shape-from-silhouette require multiple images, as input, under a complicated optimization process, which is usually not convenient in fieldwork. Little effort has been put into investigating the applications of deep neural network methods to reconstruct thin objects, like plant root systems, from a single image. We propose an unsupervised learning scheme to estimate the root depth from only one image as input, which is further applied to reconstruct the complete root system. The boundaries of the reconstructed object usually contain large errors, which is a significant problem for roots with many thin branches. To reduce reconstruction errors, we integrate a cross-view GAN-based network into the reconstruction process, which predicts the root image from a different perspective. Based on the predicted view, we reconstruct the root system using stereo reconstruction, which helps to identify the accurately reconstructed points by enforcing their consistency. The results on both the real plant root dataset and the synthetic dataset demonstrate the effectiveness of the proposed algorithm compared with state-of-the-art single image 3D reconstruction models on plant roots.
植物根系是其与物理和生物环境相互作用的主要途径。三维根系结构可以为植物的生长能力提供基础和应用知识,但构建细而复杂的植物根系的三维结构具有挑战性。现有的方法,如运动结构和形状轮廓,需要多个图像作为输入,并在复杂的优化过程中进行,这在野外工作中通常不方便。很少有人致力于研究深度学习网络方法在从单个图像重建像植物根系这样的细物体方面的应用。我们提出了一种无监督学习方案,仅从输入的单个图像中估计根系深度,然后进一步应用于重建完整的根系系统。重建对象的边界通常包含较大的误差,这对于具有许多细枝的根系来说是一个重大问题。为了减少重建误差,我们将基于跨视图 GAN 的网络集成到重建过程中,该网络从不同的视角预测根系图像。基于预测视图,我们使用立体重建来重建根系系统,这有助于通过强制一致性来识别准确重建的点。在真实植物根系数据集和合成数据集上的结果表明,与最先进的单图像 3D 重建模型相比,该算法对植物根系的重建效果更好。