TU Berlin

Fachgebiet NachrichtenübertragungTUBCrowdFlow Dataset

Inhalt des Dokuments

zur Navigation

TUB CrowdFlow: Optical Flow Dataset and Evaluation Kit for Visual Crowd Analysis

Overview of TUB CrowdFlow dataset with excerpts of the rendered sequences and related ground-truth.
Lupe

The performance of optical flow algorithms greatly depends on the specifics of the content and the application for which it is used. Existing and well established optical flow datasets are limited to rather particular contents from which none is close to crowd behavior analysis; whereas such applications heavily utilize optical flow. We introduce a new optical flow dataset exploiting the possibilities of a recent video engine to generate sequences with groundtruth optical flow for large crowds in different scenarios. We break with the development of the last decade of introducing ever increasing displacements to pose new difficulties. Instead we focus on real-world surveillance scenarios where numerous small, partly independent, non rigidly moving objects observed over a long temporal range pose a challenge. By evaluating different optical flow algorithms, we find that results of established datasets can not be transferred to these new challenges.

Publication:

Schröder, G.,Senst,T., Bochinski, E., and Sikora,T. Optical Flow Dataset and Benchmark for Visual Crowd Analysis. AVSS, 2018

Code Evaluation Kit: https://github.com/tsenst/CrowdFlow

Direct Dataset Links via: ftp, tubcloud

Navigation

Direktzugang

Schnellnavigation zur Seite über Nummerneingabe