Traffic Anomaly Prediction System Using Predictive Network

Anomaly anticipation in traffic scenarios is one of the primary challenges in action recognition. It is believed that greater accuracy can be obtained by the use of semantic details and motion information along with the input frames. Most state-of-the art models extract semantic details and pre-defi...

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Veröffentlicht in:Remote sensing (Basel, Switzerland) Switzerland), 2022-02, Vol.14 (3), p.447
Hauptverfasser: Riaz, Waqar, Gao, Chenqiang, Azeem, Abdullah, Saifullah, Bux, Jamshaid, Ullah, Asif
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Sprache:eng
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Zusammenfassung:Anomaly anticipation in traffic scenarios is one of the primary challenges in action recognition. It is believed that greater accuracy can be obtained by the use of semantic details and motion information along with the input frames. Most state-of-the art models extract semantic details and pre-defined optical flow from RGB frames and combine them using deep neural networks. Many previous models failed to extract motion information from pre-processed optical flow. Our study shows that optical flow provides better detection of objects in video streaming, which is an essential feature in further accident prediction. Additional to this issue, we propose a model that utilizes the recurrent neural network which instantaneously propagates predictive coding errors across layers and time steps. By assessing over time the representations from the pre-trained action recognition model from a given video, the use of pre-processed optical flows as input is redundant. Based on the final predictive score, we show the effectiveness of our proposed model on three different types of anomaly classes as Speeding Vehicle, Vehicle Accident, and Close Merging Vehicle from the state-of-the-art KITTI, D2City and HTA datasets.
ISSN:2072-4292
2072-4292
DOI:10.3390/rs14030447