Large-Scale Object Detection of Images from Network Cameras in Variable Ambient Lighting Conditions
Caleb Tung, Matthew R. Kelleher, Ryan J. Schlueter, Binhan Xu,, Yung-Hsiang Lu, George K. Thiruvathukal, Yen-Kuang Chen, Yang Lu

TL;DR
This study evaluates YOLO's object detection consistency across large-scale, real-world network camera images under varying lighting conditions, revealing limitations in detecting objects consistently, especially at night.
Contribution
It introduces a large-scale, real-world dataset from network cameras to assess YOLO's detection consistency across different environments and lighting conditions.
Findings
YOLO struggles to detect the same objects consistently across frames.
Detection accuracy decreases significantly at night.
Large-scale real-world data reveals limitations of current object detection models.
Abstract
Computer vision relies on labeled datasets for training and evaluation in detecting and recognizing objects. The popular computer vision program, YOLO ("You Only Look Once"), has been shown to accurately detect objects in many major image datasets. However, the images found in those datasets, are independent of one another and cannot be used to test YOLO's consistency at detecting the same object as its environment (e.g. ambient lighting) changes. This paper describes a novel effort to evaluate YOLO's consistency for large-scale applications. It does so by working (a) at large scale and (b) by using consecutive images from a curated network of public video cameras deployed in a variety of real-world situations, including traffic intersections, national parks, shopping malls, university campuses, etc. We specifically examine YOLO's ability to detect objects in different scenarios (e.g.,…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Neural Network Applications · Image Enhancement Techniques
