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Smart city article details

Title People Counting Via Supervised Learning-Based 2D Cnn-Lr Model In Complex Crowd Images
ID_Doc 41571
Authors Tomar A.; Verma K.K.; Kumar P.
Year 2024
Published Lecture Notes in Electrical Engineering, 1231 LNEE
DOI http://dx.doi.org/10.1007/978-981-97-5227-0_17
Abstract People counting from images can be a natural action, but automated tracking of individuals and counting through a machine-learning model is a big challenge. For an intelligent city transportation system, emergency people planning, and a better congestion control system, it is necessary to have an effective crowd-counting method even if the crowd is dense and fast. The supervised pedestrian estimation techniques work with crowded images along with the labeled information. The existing people-counting techniques often failed to offer practical ways to include training models from labeled samples that result in lower accuracy. To overcome these shortcomings, a deep CNN-LR architectural model is addressed to present people in images efficiently. Mainly this framework incorporates a linear regression model with a deep convolution neural network (2DConvNet) having deep accumulated attributes. The challenging and benchmark Mall dataset is used to conduct the people-counting experiment and secured MAE and MSE are 1.65 and 2.23, respectively, which indeed obtained a state of art level performance than other real-time crowd counting mechanisms. © The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2024.
Author Keywords Artificial intelligence; Crowd counting; MAE; RMSE


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