Real-Time Deep Learning Method for Abandoned Luggage Detection in Video. Smeureanu, S. & Ionescu, R. T. In 2018 26th European Signal Processing Conference (EUSIPCO), pages 1775-1779, Sep., 2018. Paper doi abstract bibtex Recent terrorist attacks in major cities around the world have brought many casualties among innocent citizens. One potential threat is represented by abandoned luggage items (that could contain bombs or biological warfare) in public areas. In this paper, we describe an approach for real-time automatic detection of abandoned luggage in video captured by surveillance cameras. The approach is comprised of two stages: (i) static object detection based on background subtraction and motion estimation and (ii) abandoned luggage recognition based on a cascade of convolutional neural networks (CNN). To train our neural networks we provide two types of examples: images collected from the Internet and realistic examples generated by imposing various suitcases and bags over the scene's background. We present empirical results demonstrating that our approach yields better performance than a strong CNN baseline method.
@InProceedings{8553156,
author = {S. Smeureanu and R. T. Ionescu},
booktitle = {2018 26th European Signal Processing Conference (EUSIPCO)},
title = {Real-Time Deep Learning Method for Abandoned Luggage Detection in Video},
year = {2018},
pages = {1775-1779},
abstract = {Recent terrorist attacks in major cities around the world have brought many casualties among innocent citizens. One potential threat is represented by abandoned luggage items (that could contain bombs or biological warfare) in public areas. In this paper, we describe an approach for real-time automatic detection of abandoned luggage in video captured by surveillance cameras. The approach is comprised of two stages: (i) static object detection based on background subtraction and motion estimation and (ii) abandoned luggage recognition based on a cascade of convolutional neural networks (CNN). To train our neural networks we provide two types of examples: images collected from the Internet and realistic examples generated by imposing various suitcases and bags over the scene's background. We present empirical results demonstrating that our approach yields better performance than a strong CNN baseline method.},
keywords = {government data processing;learning (artificial intelligence);motion estimation;neural nets;object detection;terrorism;video surveillance;abandoned luggage detection;abandoned luggage items;biological warfare;public areas;surveillance cameras;static object detection;background subtraction;motion estimation;abandoned luggage recognition;convolutional neural networks;terrorist attacks;CNN baseline method;Object detection;Convolutional neural networks;Cameras;Real-time systems;Pipelines;Europe},
doi = {10.23919/EUSIPCO.2018.8553156},
issn = {2076-1465},
month = {Sep.},
url = {https://www.eurasip.org/proceedings/eusipco/eusipco2018/papers/1570435791.pdf},
}
Downloads: 0
{"_id":"xtsKFHHr3ygr2MaA4","bibbaseid":"smeureanu-ionescu-realtimedeeplearningmethodforabandonedluggagedetectioninvideo-2018","authorIDs":[],"author_short":["Smeureanu, S.","Ionescu, R. T."],"bibdata":{"bibtype":"inproceedings","type":"inproceedings","author":[{"firstnames":["S."],"propositions":[],"lastnames":["Smeureanu"],"suffixes":[]},{"firstnames":["R.","T."],"propositions":[],"lastnames":["Ionescu"],"suffixes":[]}],"booktitle":"2018 26th European Signal Processing Conference (EUSIPCO)","title":"Real-Time Deep Learning Method for Abandoned Luggage Detection in Video","year":"2018","pages":"1775-1779","abstract":"Recent terrorist attacks in major cities around the world have brought many casualties among innocent citizens. One potential threat is represented by abandoned luggage items (that could contain bombs or biological warfare) in public areas. In this paper, we describe an approach for real-time automatic detection of abandoned luggage in video captured by surveillance cameras. The approach is comprised of two stages: (i) static object detection based on background subtraction and motion estimation and (ii) abandoned luggage recognition based on a cascade of convolutional neural networks (CNN). To train our neural networks we provide two types of examples: images collected from the Internet and realistic examples generated by imposing various suitcases and bags over the scene's background. We present empirical results demonstrating that our approach yields better performance than a strong CNN baseline method.","keywords":"government data processing;learning (artificial intelligence);motion estimation;neural nets;object detection;terrorism;video surveillance;abandoned luggage detection;abandoned luggage items;biological warfare;public areas;surveillance cameras;static object detection;background subtraction;motion estimation;abandoned luggage recognition;convolutional neural networks;terrorist attacks;CNN baseline method;Object detection;Convolutional neural networks;Cameras;Real-time systems;Pipelines;Europe","doi":"10.23919/EUSIPCO.2018.8553156","issn":"2076-1465","month":"Sep.","url":"https://www.eurasip.org/proceedings/eusipco/eusipco2018/papers/1570435791.pdf","bibtex":"@InProceedings{8553156,\n author = {S. Smeureanu and R. T. Ionescu},\n booktitle = {2018 26th European Signal Processing Conference (EUSIPCO)},\n title = {Real-Time Deep Learning Method for Abandoned Luggage Detection in Video},\n year = {2018},\n pages = {1775-1779},\n abstract = {Recent terrorist attacks in major cities around the world have brought many casualties among innocent citizens. One potential threat is represented by abandoned luggage items (that could contain bombs or biological warfare) in public areas. In this paper, we describe an approach for real-time automatic detection of abandoned luggage in video captured by surveillance cameras. The approach is comprised of two stages: (i) static object detection based on background subtraction and motion estimation and (ii) abandoned luggage recognition based on a cascade of convolutional neural networks (CNN). To train our neural networks we provide two types of examples: images collected from the Internet and realistic examples generated by imposing various suitcases and bags over the scene's background. We present empirical results demonstrating that our approach yields better performance than a strong CNN baseline method.},\n keywords = {government data processing;learning (artificial intelligence);motion estimation;neural nets;object detection;terrorism;video surveillance;abandoned luggage detection;abandoned luggage items;biological warfare;public areas;surveillance cameras;static object detection;background subtraction;motion estimation;abandoned luggage recognition;convolutional neural networks;terrorist attacks;CNN baseline method;Object detection;Convolutional neural networks;Cameras;Real-time systems;Pipelines;Europe},\n doi = {10.23919/EUSIPCO.2018.8553156},\n issn = {2076-1465},\n month = {Sep.},\n url = {https://www.eurasip.org/proceedings/eusipco/eusipco2018/papers/1570435791.pdf},\n}\n\n","author_short":["Smeureanu, S.","Ionescu, R. T."],"key":"8553156","id":"8553156","bibbaseid":"smeureanu-ionescu-realtimedeeplearningmethodforabandonedluggagedetectioninvideo-2018","role":"author","urls":{"Paper":"https://www.eurasip.org/proceedings/eusipco/eusipco2018/papers/1570435791.pdf"},"keyword":["government data processing;learning (artificial intelligence);motion estimation;neural nets;object detection;terrorism;video surveillance;abandoned luggage detection;abandoned luggage items;biological warfare;public areas;surveillance cameras;static object detection;background subtraction;motion estimation;abandoned luggage recognition;convolutional neural networks;terrorist attacks;CNN baseline method;Object detection;Convolutional neural networks;Cameras;Real-time systems;Pipelines;Europe"],"metadata":{"authorlinks":{}},"downloads":0},"bibtype":"inproceedings","biburl":"https://raw.githubusercontent.com/Roznn/EUSIPCO/main/eusipco2018url.bib","creationDate":"2021-02-13T15:38:40.249Z","downloads":0,"keywords":["government data processing;learning (artificial intelligence);motion estimation;neural nets;object detection;terrorism;video surveillance;abandoned luggage detection;abandoned luggage items;biological warfare;public areas;surveillance cameras;static object detection;background subtraction;motion estimation;abandoned luggage recognition;convolutional neural networks;terrorist attacks;cnn baseline method;object detection;convolutional neural networks;cameras;real-time systems;pipelines;europe"],"search_terms":["real","time","deep","learning","method","abandoned","luggage","detection","video","smeureanu","ionescu"],"title":"Real-Time Deep Learning Method for Abandoned Luggage Detection in Video","year":2018,"dataSources":["yiZioZximP7hphDpY","iuBeKSmaES2fHcEE9"]}