Core: A Dataset Of Critical Objects For Response To Emergency

Ahmed A. Ambarak,John Steele,Hao Zhang

2015 IEEE International Symposium on Safety, Security, and Rescue Robotics (SSRR)(2015)

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摘要
Robotic first responders have potential to significantly improve rescue efficiency and safety in search and rescue missions. To operate intelligently, a robot requires the capability to recognize critical objects in a disaster environment, in order to effectively locate victims and/or prevent secondary disasters. In this report, we introduce a novel dataset of Critical Objects for Response to Emergency (CORE) to facilitate future design of object detection systems for search and rescue missions. We also implement an object detection approach, using object proposals, deep features, and classifiers, to recognize objects in the CORE dataset. An average accuracy of 94.6% is achieved.
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关键词
CORE dataset,rescue efficiency,search and rescue mission,critical object recognization,disaster environment,secondary disasters,critical object for response to emergency,object detection approach,object proposals,deep features,classifiers
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