NT-VOT211: A Large-Scale Benchmark for Night-time Visual Object Tracking
Yu Liu, Arif Mahmood, Muhammad Haris Khan

TL;DR
NT-VOT211 is the largest dedicated night-time visual object tracking benchmark, providing extensive annotated data to evaluate and improve tracking algorithms under challenging low-light conditions.
Contribution
This paper introduces NT-VOT211, the first large-scale, well-annotated night-time tracking benchmark, addressing a significant gap in existing datasets for low-light environment evaluation.
Findings
Analysis of 42 tracking algorithms reveals strengths and weaknesses in night-time scenarios.
Benchmark facilitates evaluation and development of more robust night-time tracking methods.
Publicly available code and annotations support reproducibility and further research.
Abstract
Many current visual object tracking benchmarks such as OTB100, NfS, UAV123, LaSOT, and GOT-10K, predominantly contain day-time scenarios while the challenges posed by the night-time has been less investigated. It is primarily because of the lack of a large-scale, well-annotated night-time benchmark for rigorously evaluating tracking algorithms. To this end, this paper presents NT-VOT211, a new benchmark tailored for evaluating visual object tracking algorithms in the challenging night-time conditions. NT-VOT211 consists of 211 diverse videos, offering 211,000 well-annotated frames with 8 attributes including camera motion, deformation, fast motion, motion blur, tiny target, distractors, occlusion and out-of-view. To the best of our knowledge, it is the largest night-time tracking benchmark to-date that is specifically designed to address unique challenges such as adverse visibility,…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Impact of Light on Environment and Health · Visual Attention and Saliency Detection
