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A Novel Approach to Droplet’s 3D Shape Recovery Based on Mask R-CNN and Improved Lambert–Phong Model

机译:基于Mask R-CNN和改进的Lambert-Phong模型的液滴3D形状恢复的新方法

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Aiming at the demand for extracting the three-dimensional shapes of droplets in microelectronic packaging, life science, and some related fields, as well as the problems of complex calculation and slow running speed of conventional shape from shading (SFS) illumination reflection models, this paper proposes a Lambert–Phong hybrid model algorithm to recover the 3D shapes of micro-droplets based on the mask regions with convolutional neural network features (R-CNN) method to extract the highlight region of the droplet surface. This method fully integrates the advantages of the Lambertian model’s fast running speed and the Phong model’s high accuracy for reconstruction of the highlight region. First, the Mask R-CNN network is used to realize the segmentation of the highlight region of the droplet and obtain its coordinate information. Then, different reflection models are constructed for the different reflection regions of the droplet, and the Taylor expansion and Newton iteration method are used for the reflection model to get the final height of all positions. Finally, a three-dimensional reconstruction experimental platform is built to analyze the accuracy and speed of the algorithm on the synthesized hemisphere image and the actual droplet image. The experimental results show that the proposed algorithm based on mask R-CNN had better precision and shorter running time. Hence, this paper provides a new approach for real-time measurement of 3D droplet shape in the dispensing state.
机译:针对微电子包装,生命科学及一些相关领域中提取液滴的三维形状的需求,以及阴影(SFS)照明反射模型计算常规形状的复杂计算和运行速度慢的问题,论文提出了一种Lambert-Phong混合模型算法,该算法利用卷积神经网络特征(R-CNN)方法基于遮罩区域恢复微滴的3D形状,以提取液滴表面的高光区域。这种方法充分体现了Lambertian模型运行速度快和Phong模型的高准确度(用于重建高光区域)的优点。首先,使用Mask R-CNN网络实现液滴高亮区域的分割并获得其坐标信息。然后,针对液滴的不同反射区域构造不同的反射模型,并将泰勒展开和牛顿迭代法用于反射模型以获取所有位置的最终高度。最后,建立了三维重建实验平台,对合成的半球图像和实际的液滴图像分析算法的准确性和速度。实验结果表明,所提出的基于掩码R-CNN的算法具有较高的精度和较短的运行时间。因此,本文提供了一种在分配状态下实时测量3D液滴形状的新方法。

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