Methods to Simplify Object Tracking in Video Data

Autor: Orban, Chris, Zimmerman, Scott, Kulp, Jessica T., Boughton, Jennifer, Perrico, Zach, Rapp, Brianna, Teeling-Smith, Richelle
Rok vydání: 2022
Předmět:
Druh dokumentu: Working Paper
Popis: Recent years have seen an explosion of interest in analyzing the motion of objects in video data as a way for students to connect the concepts of physics to something tangible like a video recording of an experiment. A variety of software exists for students to look at individual frames and click on the object to infer the x,y position. Some of these tools include a capability to automatically identify the position of the object in the frame. But it is not unusual, especially when inexperienced users are recording the video and configuring the program, for these algorithms to struggle to "lock on" to the moving object. In this paper, we both include some general advice to help object tracking algorithms locate an object and we provide our own algorithms that are simpler and potentially more effective than the sophisticated image processing algorithms that are currently being used. These algorithms focus not on a "template image" of the moving object but instead distinguish between the object and the background by analyzing only the colors of individual pixels. These algorithms are built into a free and open source program called the STEMcoding Object Tracker (http://go.osu.edu/objecttracker) which works in the browser (without any downloads) and is compatible with a variety of operating systems including chromebooks.
Comment: 6 pages, 4 figures, minor changes compared to earlier version
Databáze: arXiv