A Gun Detection Dataset and Searching for Embedded Device Solutions
- URL: http://arxiv.org/abs/2105.01058v1
- Date: Mon, 3 May 2021 17:58:45 GMT
- Title: A Gun Detection Dataset and Searching for Embedded Device Solutions
- Authors: Delong Qi, Weijun Tan, Zhifu Liu, Qi Yao, Jingfeng Liu
- Abstract summary: We publish a dataset with 51K annotated gun images for gun detection and other 51K cropped gun chip images for gun classification.
To our knowledge, this is the largest dataset for the study of gun detection.
We also study to search for solutions for gun detection in embedded edge device (camera) and a gun/non-gun classification on a cloud server.
- Score: 1.2149550080095914
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Gun violence is a severe problem in the world, particularly in the United
States. Computer vision methods have been studied to detect guns in
surveillance video cameras or smart IP cameras and to send a real-time alert to
safety personals. However, due to no public datasets, it is hard to benchmark
how well such methods work in real applications. In this paper we publish a
dataset with 51K annotated gun images for gun detection and other 51K cropped
gun chip images for gun classification we collect from a few different sources.
To our knowledge, this is the largest dataset for the study of gun detection.
This dataset can be downloaded at www.linksprite.com/gun-detection-datasets. We
also study to search for solutions for gun detection in embedded edge device
(camera) and a gun/non-gun classification on a cloud server. This edge/cloud
framework makes possible the deployment of gun detection in the real world.
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