Bottom-up/Top-down Geometric Object Reconstruction with CNN Classification for Mobile Education

Ting Guo, Rundong Cui, Xiaoran Qin, Yongtao Wang, Zhi Tang
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引用次数: 1

Abstract

Geometric objects in educational materials are often illustrated as 2D line drawings, which results in the loss of depth information. To alleviate the problem of fully understanding the 3D structure of geometric objects, we propose a novel method to reconstruct the 3D shape of a geometric object illustrated in a line drawing image. In contrast to most existing methods, ours directly take a single line drawing image as input and generate a valid sketch for reconstruction. Given a single input line drawing image, we first classify the geometric object in the image with convolution neural network (CNN). More specifically, we pre-train the model with simulated images to alleviate the problems of data collection and unbalanced distribution among different classes. Then, we generate the sketch of the geometric object with our proposed bottom-up and top-down scheme. Finally, we finish reconstruction by minimizing an objective function of reconstruction error. Extensive experimental results demonstrate that our method performs significantly better in both accuracy and efficiency compared with the existing methods.
基于CNN分类的移动教育自底向上/自顶向下几何对象重建
教材中的几何对象通常以二维线条图的形式进行说明,这导致了深度信息的丢失。为了减轻对几何物体三维结构的完全理解问题,我们提出了一种新的方法来重建用线条绘制的几何物体的三维形状。与大多数现有方法相比,我们的方法直接将单幅线条绘制图像作为输入,并生成有效的草图进行重建。给定一个单一输入的线条绘制图像,我们首先使用卷积神经网络(CNN)对图像中的几何物体进行分类。更具体地说,我们使用模拟图像对模型进行预训练,以缓解数据收集和不同类别之间分布不平衡的问题。然后,我们使用我们提出的自底向上和自顶向下的方案生成几何对象的草图。最后,通过最小化重构误差的目标函数完成重构。大量的实验结果表明,与现有方法相比,我们的方法在精度和效率方面都有显著提高。
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