A Sketch-texture Retrieval Framework using Perceptual Similarity
Image credit: Yan Liu摘要
Sketch-based image retrieval is an important research topic in the field of image processing. Hand-drawn sketches consist only of contour lines, and lack detailed information such as color and textons. As a result, they differ significantly from color images in terms of image feature distribution, making sketch-based image retrieval a typical cross-domain retrieval problem. To solve this problem, we constructed a perceptual space consistent with both textures and sketches, and using perceptual similarity for sketch-based texture retrieval. To implement this approach, we first conduct a set of psychological experiments to analyze the similarity of visual perception of the textures, then we create a dataset of over a thousand hand-drawn sketches according to the textures. We proposed a layer-wise perceptual similarity learning method that integrates perceptual similarity, with which we trained a similarity prediction network to learn the perceptual similarity between hand-drawn sketches and natural texture images. The trained network can be used for perceptual similarity prediction and efficient retrieval. Our experimental results demonstrate the effectiveness of sketch-based texture retrieval using perceptual similarity.
类型
出版物
Knowledge-Based Systems
Authors

Authors
讲师
硕士生导师,硕博连读毕业于中国海洋大学的计算机应用技术专业,是中国计算机学会会员和山东省人工智能学会会员,主持一项国家自然科学基金青年项目,参与一项山东省自然科学基金面上项目,主要研究方向为机器学习和计算机视觉
Authors
Authors
Authors