Publication Date:
2020
abstract:
Knowing an accurate passengers attendance estimation on each metro car contributes to the safely coordination and sorting the crowd-passenger in each metro station. In this work we propose a multi-head Convolutional Neural Network (CNN) architecture trained to infer an estimation of passenger attendance in a metro car. The proposed network architecture consists of two main parts: a convolutional backbone, which extracts features over the whole input image, and a multi-head layers able to estimate a density map, needed to predict the number of people within the crowd image. The network performance is first evaluated on publicly available crowd counting datasets, including the ShanghaiTech part_A, ShanghaiTech part_B and UCF_CC_50, and then trained and tested on our dataset acquired in subway cars in Italy. In both cases a comparison is made against the most relevant and latest state of the art crowd counting architectures, showing that our proposed MH-MetroNet architecture outperforms in terms of Mean Absolute Error (MAE) and Mean Square Error (MSE) and passenger-crowd people number prediction.
Iris type:
01.01 Articolo in rivista
Keywords:
crowd counting; convolutional neural network; multi-head; smart cities; artificial intelligence
List of contributors:
Contino, Riccardo; Distante, Cosimo; Nitti, Massimiliano; Mazzeo, PIER LUIGI; Spagnolo, Paolo; Reno', Vito; Stella, Ettore
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