RT Conference Proceedings T1 People Counting in Videos by Fusing Temporal Cues from Spatial Context-Aware Convolutional Neural Networks A1 Sourtzinos, Panos A1 Velastin Carroza, Sergio Alejandro A1 Jara, Miguel A1 Zegers, Pablo A1 Makris, Dimitrios AB We present an efficient method for people counting in video sequences from fixed cameras by utilising the responses of spatially context-aware convolutional neural networks (CNN) in the temporal domain. For stationary cameras, the background information remains fairly static, while foreground characteristics, such as size and orientation may depend on their image location, thus the use of whole frames for training a CNN improves the differentiation between background and foreground pixels. Foreground density representing the presence of people in the environment can then be associated with people counts. Moreover the fusion, of the responses of count estimations, in the temporal domain, can further enhance the accuracy of the final count. Our methodology was tested using the publicly available Mall dataset and achieved a mean deviation error of 0.091. PB Springer SN 978-3-319-48880-6 YR 2016 FD 2016-11-03 LK https://hdl.handle.net/10016/28944 UL https://hdl.handle.net/10016/28944 LA eng NO This paper has been presented at : 14th European Conference on Computer Vision DS e-Archivo RD 20 may. 2024