Timezone: »
Image-based 3D shape retrieval (IBSR) aims to find the corresponding 3D shape of a given 2D image from a large 3D shape database. The common routine is to map 2D images and 3D shapes into an embedding space and define (or learn) a shape similarity measure. While metric learning with some adaptation techniques seems to be a natural solution to shape similarity learning, the performance is often unsatisfactory for fine-grained shape retrieval. In the paper, we identify the source of the poor performance and propose a practical solution to this problem. We find that the shape difference between a negative pair is entangled with the texture gap, making metric learning ineffective in pushing away negative pairs. To tackle this issue, we develop a geometry-focused multi-view metric learning framework empowered by texture synthesis. The synthesis of textures for 3D shape models creates hard triplets, which suppress the adverse effects of rich texture in 2D images, thereby push the network to focus more on discovering geometric characteristics. Our approach shows state-of-the-art performance on a recently released large-scale 3D-FUTURE [1] repository, as well as three widely studied benchmarks, including Pix3D [2], Stanford Cars [3], and Comp Cars [4]. Codes will be made publicly available at: https://github.com/3D-FRONT-FUTURE/IBSR-texture.
Author Information
Huan Fu (Alibaba Group)
Shunming Li (Alibaba Group)
Rongfei Jia (Alibaba Group)
Mingming Gong (University of Melbourne)
Binqiang Zhao (Alibaba Corp)
Dacheng Tao (University of Sydney)
More from the Same Authors
-
2022 Poster: MissDAG: Causal Discovery in the Presence of Missing Data with Continuous Additive Noise Models »
Erdun Gao · Ignavier Ng · Mingming Gong · Li Shen · Wei Huang · Tongliang Liu · Kun Zhang · Howard Bondell -
2022 Poster: Counterfactual Fairness with Partially Known Causal Graph »
Aoqi Zuo · Susan Wei · Tongliang Liu · Bo Han · Kun Zhang · Mingming Gong -
2022 Poster: Truncated Matrix Power Iteration for Differentiable DAG Learning »
Zhen Zhang · Ignavier Ng · Dong Gong · Yuhang Liu · Ehsan Abbasnejad · Mingming Gong · Kun Zhang · Javen Qinfeng Shi -
2020 Poster: SCOP: Scientific Control for Reliable Neural Network Pruning »
Yehui Tang · Yunhe Wang · Yixing Xu · Dacheng Tao · Chunjing XU · Chao Xu · Chang Xu -
2020 Poster: Dual T: Reducing Estimation Error for Transition Matrix in Label-noise Learning »
Yu Yao · Tongliang Liu · Bo Han · Mingming Gong · Jiankang Deng · Gang Niu · Masashi Sugiyama -
2020 Poster: Part-dependent Label Noise: Towards Instance-dependent Label Noise »
Xiaobo Xia · Tongliang Liu · Bo Han · Nannan Wang · Mingming Gong · Haifeng Liu · Gang Niu · Dacheng Tao · Masashi Sugiyama -
2020 Poster: Auto Learning Attention »
Benteng Ma · Jing Zhang · Yong Xia · Dacheng Tao -
2020 Spotlight: Part-dependent Label Noise: Towards Instance-dependent Label Noise »
Xiaobo Xia · Tongliang Liu · Bo Han · Nannan Wang · Mingming Gong · Haifeng Liu · Gang Niu · Dacheng Tao · Masashi Sugiyama -
2020 Poster: Searching for Low-Bit Weights in Quantized Neural Networks »
Zhaohui Yang · Yunhe Wang · Kai Han · Chunjing XU · Chao Xu · Dacheng Tao · Chang Xu -
2020 Poster: Domain Adaptation as a Problem of Inference on Graphical Models »
Kun Zhang · Mingming Gong · Petar Stojanov · Biwei Huang · QINGSONG LIU · Clark Glymour -
2020 Poster: Video Frame Interpolation without Temporal Priors »
Youjian Zhang · Chaoyue Wang · Dacheng Tao -
2020 Poster: Domain Generalization via Entropy Regularization »
Shanshan Zhao · Mingming Gong · Tongliang Liu · Huan Fu · Dacheng Tao -
2019 Poster: Theoretical Analysis of Adversarial Learning: A Minimax Approach »
Zhuozhuo Tu · Jingwei Zhang · Dacheng Tao -
2019 Spotlight: Theoretical Analysis of Adversarial Learning: A Minimax Approach »
Zhuozhuo Tu · Jingwei Zhang · Dacheng Tao -
2019 Poster: Category Anchor-Guided Unsupervised Domain Adaptation for Semantic Segmentation »
Qiming ZHANG · Jing Zhang · Wei Liu · Dacheng Tao -
2019 Poster: LIIR: Learning Individual Intrinsic Reward in Multi-Agent Reinforcement Learning »
Yali Du · Lei Han · Meng Fang · Ji Liu · Tianhong Dai · Dacheng Tao -
2019 Poster: Learn, Imagine and Create: Text-to-Image Generation from Prior Knowledge »
Tingting Qiao · Jing Zhang · Duanqing Xu · Dacheng Tao -
2019 Poster: Control Batch Size and Learning Rate to Generalize Well: Theoretical and Empirical Evidence »
Fengxiang He · Tongliang Liu · Dacheng Tao -
2019 Poster: Positive-Unlabeled Compression on the Cloud »
Yixing Xu · Yunhe Wang · Hanting Chen · Kai Han · Chunjing XU · Dacheng Tao · Chang Xu -
2019 Poster: Learning from Bad Data via Generation »
Tianyu Guo · Chang Xu · Boxin Shi · Chao Xu · Dacheng Tao -
2019 Poster: Likelihood-Free Overcomplete ICA and Applications In Causal Discovery »
Chenwei DING · Mingming Gong · Kun Zhang · Dacheng Tao -
2019 Spotlight: Likelihood-Free Overcomplete ICA and Applications In Causal Discovery »
Chenwei DING · Mingming Gong · Kun Zhang · Dacheng Tao -
2018 Poster: Dual Swap Disentangling »
Zunlei Feng · Xinchao Wang · Chenglong Ke · An-Xiang Zeng · Dacheng Tao · Mingli Song