基于深度学习方法的写意笔画鲁棒特征点检测

Long Zeng, X. Zhang, Zhi-Kai Dong, Hong-yu Wang, Jia-yi Yu
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引用次数: 0

摘要

鲁棒的特征点检测(FPD)工具对于基于草图的工程建模至关重要。我们提出了一种基于深度学习方法的写意笔画FPD算法,称为FPD- dl。首先,训练逐点神经网络从点的多尺度上下文图像中学习局部和全局特征,将笔画的每个点划分为线点或曲线点;然后,设计了段合并过程,从已识别的段中提取原语。它探索邻近部分的分布模式。最后,在连续基元之间添加切点和丢失角。在包含20种形状的1500笔画的数据集上进行了鲁棒性和准确性的实验,这些数据集分为按人和按形状两类。在按人分类中,FPD-DL的AON(全有或全无)准确率为97%,而最先进的算法的准确率为94.3%。在按形状设置类别中,测试了对笔画形状的鲁棒性,这与实际使用场景相似。FPD-DL的AON准确率为95%,无太大波动。因此,该方法对笔画形状和笔画样式都具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust feature point detection for freehand strokes with deep learning approach
A robust feature point detection (FPD) tool is critical for sketch-based engineering modelling. We propose an FPD algorithm for freehand strokes based on a deep learning approach, denoted as FPD-DL. First, a point-wise neural network is trained to learn local and global features from points' multi-scale context images to classify each point of a stroke into a line-point or a curve-point. Then, a segment merging procedure is designed to extract primitives from the identified segments. It explores the distribution patterns of neighbouring segments. Finally, the tangent points and lost corners are added among consecutive primitives. The algorithm robustness and accuracy are experimented on a dataset with 1500 strokes of 20 shapes, which are grouped into two categories: set-by-person and set-by-shape. In the set-by-person category, the AON (all-or-nothing) accuracy of FPD-DL is 97%, compared to 94.3% of the state-of-the-art algorithm. In the set-by-shape category, the robustness to stroke shape is tested, which is similar to the practical usage scenario. The AON accuracy of FPD-DL is 95%, without too much fluctuation. Thus, the new proposed approach is robust to both stroke shape and stroke style.
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