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13 April 2018 Recurrent neural network based virtual detection line
Roberts Kadikis
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Proceedings Volume 10696, Tenth International Conference on Machine Vision (ICMV 2017); 106961V (2018)
Event: Tenth International Conference on Machine Vision, 2017, Vienna, Austria
The paper proposes an efficient method for detection of moving objects in the video. The objects are detected when they cross a virtual detection line. Only the pixels of the detection line are processed, which makes the method computationally efficient. A Recurrent Neural Network processes these pixels. The machine learning approach allows one to train a model that works in different and changing outdoor conditions. Also, the same network can be trained for various detection tasks, which is demonstrated by the tests on vehicle and people counting. In addition, the paper proposes a method for semi-automatic acquisition of labeled training data. The labeling method is used to create training and testing datasets, which in turn are used to train and evaluate the accuracy and efficiency of the detection method. The method shows similar accuracy as the alternative efficient methods but provides greater adaptability and usability for different tasks.
© (2018) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Roberts Kadikis "Recurrent neural network based virtual detection line", Proc. SPIE 10696, Tenth International Conference on Machine Vision (ICMV 2017), 106961V (13 April 2018);

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