Abstract

In this paper, we introduce a novel 3D shape reconstruction method from a single-view sketch image based on a deep neural network. The proposed pipeline is mainly composed of three modules. The first module is sketch component segmentation based on multimodal DNN fusion and is used to segment a given sketch into a series of basic units and build a transformation template by the knots between them. The second module is a nonlinear transformation network for multifarious sketch generation with the obtained transformation template. It creates the transformation representation of a sketch by extracting the shape features of an input sketch and transformation template samples. The third module is deep 3D shape reconstruction using multifarious sketches, which takes the obtained sketches as input to reconstruct 3D shapes with a generative model. It fuses and optimizes features of multiple views and thus is more likely to generate high-quality 3D shapes. To evaluate the effectiveness of the proposed method, we conduct extensive experiments on a public 3D reconstruction dataset. The results demonstrate that our model can achieve better reconstruction performance than peer methods. Specifically, compared to the state-of-the-art method, the proposed model achieves a performance gain in terms of the five evaluation metrics by an average of 25.5% on the man-made model dataset and 23.4% on the character object dataset using synthetic sketches and by an average of 31.8% and 29.5% on the two datasets, respectively, using human drawing sketches.

Highlights

  • To harvest 3D models from free-hand sketches, a crucial factor is how to accurately understand their semantic meaning

  • The proposed method improves the performance in terms of the five distance metrics by an average of 25.5% and 23.4% on the man-made objects and character models, respectively, which demonstrates that our method can generate more accurate 3D models

  • We have introduced a novel 3D shape reconstruction method from a single-view sketch image using a deep neural network

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Summary

Introduction

To harvest 3D models from free-hand sketches, a crucial factor is how to accurately understand their semantic meaning. Towards this end, conventional sketch-based 3D shape reconstruction methods like [1] rely on hand-crafted features. With the recent advance in deep learning technology, deep neural network-based 3D shape reconstruction has achieved remarkable progress. Despite these achievements, there are still many challenging issues in this area that have not been effectively addressed, which are seriously hindering the adoption of this technique in many domains. There is a great semantic gap between sketch images and 3D

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