@inproceedings{guo2015building, author = {Guo, Jun and Wang, Changhu and Chao, Hongyang}, title = {Building Effective Representations for Sketch Recognition}, booktitle = {The Twenty-Ninth AAAI Conference on Artificial Intelligence}, year = {2015}, month = {July}, abstract = {As the popularity of touch-screen devices, understanding a user’s hand-drawn sketch has become an increasingly important research topic in artificial intelligence and computer vision. However, different from natural images, the hand-drawn sketches are often highly abstract, with sparse visual information and large intraclass variance, making the problem more challenging. In this work, we study how to build effective representations for sketch recognition. First, to capture saliency patterns of different scales and spatial arrangements, a Gabor-based low-level representation is proposed. Then, based on this representation, to discovery more complex patterns in a sketch, a Hybrid Multilayer Sparse Coding (HMSC) model is proposed to learn midlevel representations. An improved dictionary learning algorithm is also leveraged in HMSC to reduce overfitting to common but trivial patterns. Extensive experiments show that the proposed representations are highly discriminative and lead to large improvements over the state of the arts.}, url = {http://approjects.co.za/?big=en-us/research/publication/building-effective-representations-sketch-recognition/}, }