Molecular Formula Image Segmentation with Shape Constraint Loss and Data Augmentation

Ruiqi Jia, Wentao Xie, Baole Wei, Guanren Qiao, Zonglin Yang, Xiaoqing Lyu, Zhi Tang
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Abstract

The increasing demand for molecular formula image data leads to formidable pressure for researchers. Most existing image segmentation approaches can not be directly utilized for molecules, and how to improve the coverage fineness and generate a large amount of labeled training data is worthy of further exploration. To this end, we establish a deep learning based molecular formula image segmentation model (DL-MFS). Specifically, we design a shape constraint loss (SCL) function to refine the detection frame position and propose a rule-based molecular formula image data augmentation method for solving the bottleneck problem that the lack of training data. Experimental results demonstrate the effectiveness of the proposed segmentation model.
基于形状约束损失和数据增强的分子式图像分割
对分子式图像数据日益增长的需求给研究人员带来了巨大的压力。现有的图像分割方法大多不能直接对分子进行分割,如何提高覆盖精细度,生成大量的标记训练数据值得进一步探索。为此,我们建立了基于深度学习的分子式图像分割模型(DL-MFS)。具体来说,我们设计了一个形状约束损失(SCL)函数来细化检测帧位置,并提出了一种基于规则的分子式图像数据增强方法来解决训练数据缺乏的瓶颈问题。实验结果证明了该分割模型的有效性。
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