基于注意机制和改进残差网络的素描识别

Qiansheng Fang, Qiyu Li, Liangliang Su, Yalong Yang
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引用次数: 1

摘要

速写通常由简单的笔画组成。与自然图像相比,它们缺乏纹理和颜色信息。现有的大部分作品都不能很好地减少草图中空白区域的影响。本文提出了一种新的深度卷积神经网络草图融合网络(Sketch Fusion Net, SFN)模型,以最大限度地减少空白区域的影响,并专注于信息区域。该模型主要由草图块卷积(Sketch Block Convolutional, SBConv)模块组成,其中SBCnov模块集成了注意机制和改进的残差网络。第一种方法可以有效地提取草图信息的有效部分。另一种方法采用多级特征组合策略提取更丰富的语义信息,有效缓解了模型退化问题。最后,使用TU-Berlin和Sketchy两个公共数据集进行草图识别实验。结果表明,该方法的识别准确率比几种最先进的方法分别提高了2.1%和7.2%,取得了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sketch recognition based on attention mechanism and improved residual network
Sketches are usually composed of simple strokes. Compared with the natural image, they lack the information of texture and color. Most of the existing works do not reduce the impact of blank region in sketches very well. This paper proposes a new deep convolutional neural network named Sketch Fusion Net (SFN) model to minimize the effect of the blank region and focus on information region. This model is mainly composed of Sketch Block Convolutional (SBConv) modules, the SBCnov module integrates an attention mechanism and an improved residual network. The first one can effectively extract the effective part of the sketch information. The other one uses multi-level feature combination strategy to extract richer semantic information, which can effectively relieve the problem of model degradation. Finally, two public datasets, namely the TU-Berlin and Sketchy, are used for sketch recognition experiments. The results demonstrate that this proposed method improves the recognition accuracy by 2.1% and 7.2% over several state-of-the-art methods and yields promising results.
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