Value of Temporal Dynamics Information in Driving Scene Segmentation
Li Ding, Jack Terwilliger, Rini Sherony, Bryan Reimer, Lex Fridman

TL;DR
This paper investigates the added value of temporal dynamics information for driving scene segmentation, combining appearance and motion cues, and introduces a large-scale dataset for further research.
Contribution
It explores the contribution of temporal dynamics to scene segmentation and provides a new dataset with dense annotations for driving videos.
Findings
Temporal dynamics improve segmentation accuracy.
Joint learning of appearance and motion enhances performance.
The dataset facilitates future research in dynamic scene understanding.
Abstract
Semantic scene segmentation has primarily been addressed by forming representations of single images both with supervised and unsupervised methods. The problem of semantic segmentation in dynamic scenes has begun to recently receive attention with video object segmentation approaches. What is not known is how much extra information the temporal dynamics of the visual scene carries that is complimentary to the information available in the individual frames of the video. There is evidence that the human visual system can effectively perceive the scene from temporal dynamics information of the scene's changing visual characteristics without relying on the visual characteristics of individual snapshots themselves. Our work takes steps to explore whether machine perception can exhibit similar properties by combining appearance-based representations and temporal dynamics representations in a…
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Taxonomy
TopicsVisual Attention and Saliency Detection · Advanced Vision and Imaging · Advanced Image and Video Retrieval Techniques
