论文标题
素描检查员:高质量素描猫的深层混合模型
Sketch-Inspector: a Deep Mixture Model for High-Quality Sketch Generation of Cats
论文作者
论文摘要
随着人工智能(AI)的参与,可以在某些主题下自动生成草图。即使在该领域的先前研究中已经取得了突破,但生成的数字的比例相对较高,无法识别,这表明AIS在绘图时无法学习目标对象的一般模式。本文认为,监督中风生成过程可以导致更准确的草图解释。基于此,本文提出了带有助手卷积神经网络(CNN)预测器的草图生成系统,以暗示下一笔中风的形状。此外,引入了基于CNN的鉴别器来判断最终产品的可识别性。由于基线模型在生成多类草图方面无效,因此我们限制了该模型生成一个类别。由于猫的图像易于识别,因此我们考虑从QuickDraw数据集中选择的CAT草图。本文将所提出的模型与75k人间猫草的原始素描RNN进行了比较。结果表明,我们的模型比人的草图产生的素描质量更高。
With the involvement of artificial intelligence (AI), sketches can be automatically generated under certain topics. Even though breakthroughs have been made in previous studies in this area, a relatively high proportion of the generated figures are too abstract to recognize, which illustrates that AIs fail to learn the general pattern of the target object when drawing. This paper posits that supervising the process of stroke generation can lead to a more accurate sketch interpretation. Based on that, a sketch generating system with an assistant convolutional neural network (CNN) predictor to suggest the shape of the next stroke is presented in this paper. In addition, a CNN-based discriminator is introduced to judge the recognizability of the end product. Since the base-line model is ineffective at generating multi-class sketches, we restrict the model to produce one category. Because the image of a cat is easy to identify, we consider cat sketches selected from the QuickDraw data set. This paper compares the proposed model with the original Sketch-RNN on 75K human-drawn cat sketches. The result indicates that our model produces sketches with higher quality than human's sketches.