Search Results for author: Seonghyeon Moon

Found 9 papers, 3 papers with code

Laying the Foundations of Deep Long-Term Crowd Flow Prediction

1 code implementation ECCV 2020 Samuel S. Sohn, Honglu Zhou, Seonghyeon Moon, Sejong Yoon, Vladimir Pavlovic, Mubbasir Kapadia

Predicting the crowd behavior in complex environments is a key requirement for crowd and disaster management, architectural design, and urban planning.

Management

On the Equivalency, Substitutability, and Flexibility of Synthetic Data

no code implementations24 Mar 2024 Che-Jui Chang, Danrui Li, Seonghyeon Moon, Mubbasir Kapadia

In addition, our study of the impact of synthetic data distributions on downstream performance reveals the importance of flexible data generators in narrowing domain gaps for improved model adaptability.

An Information-Theoretic Approach for Estimating Scenario Generalization in Crowd Motion Prediction

no code implementations2 Nov 2022 Gang Qiao, Kaidong Hu, Seonghyeon Moon, Samuel S. Sohn, Sejong Yoon, Mubbasir Kapadia, Vladimir Pavlovic

Learning-based approaches to modeling crowd motion have become increasingly successful but require training and evaluation on large datasets, coupled with complex model selection and parameter tuning.

Model Selection motion prediction

HM: Hybrid Masking for Few-Shot Segmentation

1 code implementation24 Mar 2022 Seonghyeon Moon, Samuel S. Sohn, Honglu Zhou, Sejong Yoon, Vladimir Pavlovic, Muhammad Haris Khan, Mubbasir Kapadia

A fundamental limitation of FM is the inability to preserve the fine-grained spatial details that affect the accuracy of segmentation mask, especially for small target objects.

Few-Shot Semantic Segmentation Segmentation +1

MUSE-VAE: Multi-Scale VAE for Environment-Aware Long Term Trajectory Prediction

no code implementations CVPR 2022 Mihee Lee, Samuel S. Sohn, Seonghyeon Moon, Sejong Yoon, Mubbasir Kapadia, Vladimir Pavlovic

Accurate long-term trajectory prediction in complex scenes, where multiple agents (e. g., pedestrians or vehicles) interact with each other and the environment while attempting to accomplish diverse and often unknown goals, is a challenging stochastic forecasting problem.

Trajectory Prediction

Deep Crowd-Flow Prediction in Built Environments

no code implementations13 Oct 2019 Samuel S. Sohn, Seonghyeon Moon, Honglu Zhou, Sejong Yoon, Vladimir Pavlovic, Mubbasir Kapadia

In this paper, we propose an approach to instantly predict the long-term flow of crowds in arbitrarily large, realistic environments.

Management

Cannot find the paper you are looking for? You can Submit a new open access paper.