Search Results for author: Kun Dong

Found 8 papers, 5 papers with code

ReWiTe: Realistic Wide-angle and Telephoto Dual Camera Fusion Dataset via Beam Splitter Camera Rig

no code implementations16 Apr 2024 Chunli Peng, Xuan Dong, Tiantian Cao, Zhengqing Li, Kun Dong, Weixin Li

The fusion of images from dual camera systems featuring a wide-angle and a telephoto camera has become a hotspot problem recently.

FoodSAM: Any Food Segmentation

1 code implementation11 Aug 2023 Xing Lan, Jiayi Lyu, Hanyu Jiang, Kun Dong, Zehai Niu, Yi Zhang, Jian Xue

Remarkably, this pioneering framework stands as the first-ever work to achieve instance, panoptic, and promptable segmentation on food images.

 Ranked #1 on Semantic Segmentation on FoodSeg103 (using extra training data)

Image Segmentation Instance Segmentation +2

On-the-Fly Rectification for Robust Large-Vocabulary Topic Inference

no code implementations12 Nov 2021 Moontae Lee, Sungjun Cho, Kun Dong, David Mimno, David Bindel

Across many data domains, co-occurrence statistics about the joint appearance of objects are powerfully informative.

Community Detection

Balance Between Efficient and Effective Learning: Dense2Sparse Reward Shaping for Robot Manipulation with Environment Uncertainty

no code implementations5 Mar 2020 Yongle Luo, Kun Dong, Lili Zhao, Zhiyong Sun, Chao Zhou, Bo Song

The experiment results show that the Dense2Sparse method obtained higher expected reward compared with the ones using standalone dense reward or sparse reward, and it also has a superior tolerance of system uncertainty.

Robot Manipulation

Network Density of States

1 code implementation23 May 2019 Kun Dong, Austin R. Benson, David Bindel

Much of spectral graph theory descends directly from spectral geometry, the study of differentiable manifolds through the spectra of associated differential operators.

Social and Information Networks Numerical Analysis

Scaling Gaussian Process Regression with Derivatives

1 code implementation NeurIPS 2018 David Eriksson, Kun Dong, Eric Hans Lee, David Bindel, Andrew Gordon Wilson

Gaussian processes (GPs) with derivatives are useful in many applications, including Bayesian optimization, implicit surface reconstruction, and terrain reconstruction.

Bayesian Optimization Dimensionality Reduction +3

Scalable Log Determinants for Gaussian Process Kernel Learning

3 code implementations NeurIPS 2017 Kun Dong, David Eriksson, Hannes Nickisch, David Bindel, Andrew Gordon Wilson

For applications as varied as Bayesian neural networks, determinantal point processes, elliptical graphical models, and kernel learning for Gaussian processes (GPs), one must compute a log determinant of an $n \times n$ positive definite matrix, and its derivatives - leading to prohibitive $\mathcal{O}(n^3)$ computations.

Gaussian Processes Point Processes

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