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[ECCV'24]DreamMesh: Jointly Manipulating and Texturing Triangle Meshes for Text-to-3D Generation
Learning radiance fields (NeRF) with powerful 2D diffusion models has garnered popularity for text-to-3D generation. Nevertheless, the implicit 3D representations of NeRF lack explicit modeling of meshes and textures over surfaces, and such surface-undefined way may suffer from the issues, e.
Haibo Yang
,
Yang Chen
,
Yingwei Pan
,
Ting Yao
,
Zhineng Chen
,
Yu-Gang Jiang
,
Tao Mei
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[ECCV'24]Improving Text-guided Object Inpainting with Semantic Pre-inpainting
Yifu Chen
,
Jingwen Chen
,
Yingwei Pan
,
Yehao Li
,
Ting Yao
,
Zhineng Chen
,
Tao Mei
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[CVPR'24]Learning to Rank Patches for Unbiased Image Redundancy Reduction
Images suffer from heavy spatial redundancy because pixels in neighboring regions are spatially correlated. Existing approaches strive to overcome this limitation by reducing less meaningful image regions. However, current leading methods rely on supervisory signals.
Yang Luo
,
Zhineng Chen
,
Peng Zhou
,
Zuxuan Wu
,
Xieping Gao
,
Yu-Gang Jiang
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[AAAI'24 oral]LRANet: Towards Accurate and Effcient Scene Text Detection with Low-Rank Approximation Network
Recently, regression-based methods, which predict parameterized text shapes for text localization, have gained popularity in scene text detection. However, the existing parameterized text shape methods still have limitations in modeling arbitrary-shaped texts due to ignoring the utilization of text-specific shape information.
Yuchen Su
,
Zhineng Chen
,
Zhiwen Shao
,
Yuning Du
,
Zhilong Ji
,
Jinfeng Bai
,
Yong Zhou
,
Yu-Gang Jiang
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[MM'23]3DStyle-Diffusion: Pursuing Fine-grained Text-driven 3D Stylization with 2D Diffusion Models
3D content creation via text-driven stylization has played a fundamental challenge to multimedia and graphics community. Recent advances of cross-modal foundation models (e.g., CLIP) have made this problem feasible. Those approaches commonly leverage CLIP to align the holistic semantics of stylized mesh with the given text prompt.
Haibo Yang
,
Yang Chen
,
Yingwei Pan
,
Ting Yao
,
Zhineng Chen
,
Tao Mei
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[ICCV'23]MRN: Multiplexed Routing Network for Incremental Multilingual Text Recognition
Multilingual text recognition (MLTR) systems typically focus on a fixed set of languages, which makes it difficult to handle newly added languages or adapt to ever-changing data distribution. In this paper, we propose the Incremental MLTR (IMLTR) task in the context of incremental learning (IL), where different languages are introduced in batches.
Tianlun Zheng
,
Zhineng Chen
,
Bingchen Huang
,
Wei Zhang
,
Yu-Gang Jiang
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[AAAI'23]Resolving Task Confusion in Dynamic Expansion Architectures for Class Incremental Learning
Recently, regression-based methods, which predict parameterized text shapes for text localization, have gained popularity in scene text detection. However, the existing parameterized text shape methods still have limitations in modeling arbitrary-shaped texts due to ignoring the utilization of text-specific shape information.
Bingchen Huang
,
Zhineng Chen
,
Peng Zhou
,
Jiayin Chen
,
Zuxuan Wu
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[ICASSP'23]Multi-Object Localization and Irrelevant-Semantic Separation for Nuclei Segmentation in Histopathology Images
Automated segmentation of nuclei in histopathology images is critical for cancer diagnosis and prognosis. Due to the high variability of nuclei morphology, numerous nuclei overlapping, and the wide existence of nuclei clusters, this task still remains challenging.
Ya Tang
,
Xiongjun Ye
,
Xuanya Li
,
Zhineng Chen
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[IJCAI'23]TPS++: Attention-Enhanced Thin-Plate Spline for Scene Text Recognition
Text irregularities pose significant challenges to scene text recognizers. Thin-Plate Spline (TPS)-based rectification is widely regarded as an effective means to deal with them. Currently, the calculation of TPS transformation parameters purely depends on the quality of regressed text borders.
Tianlun Zheng
,
Zhineng Chen
,
Jinfeng Bai
,
Hongtao Xie
,
Yu-Gang Jiang
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[BSPC'23]MMSRNet: Pathological image super-resolution by multi-task and multi-scale learning
Pathological diagnosis is the gold standard for disease assessment in clinical practice. It is conducted by inspecting the specimen at the microscopical level. Therefore, a very high-resolution pathological image that precisely describes the submicron-scale appearance is essential in the era of digital pathology, which is not easily obtained.
Xinyue Wu
,
Zhineng Chen
,
Changgen Peng
,
Xiongjun Ye
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