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Article type: Research Article
Authors: Singh, Upendra | Gupta, Puja; * | Shukla, Mukul
Affiliations: Department of Information Technology, Shri Govindram Seksaria Institute of Technology and Science, Indore, India
Correspondence: [*] Corresponding author. Puja Gupta, Assistant Professor, E-mail: pooja1porwal@gmail.com.
Abstract: Image Incorporation concerns, including background confusion, uneven population distribution, and variations in scale and familiarity, can make group counting difficult. Pre-existing information and multi-level contextual representations are required to handle these problems effectively with deep neural networks and Mask-RCNN. Numerous studies on crowd counting use density maps without segmentation, which treat a group of individuals as a single entity. This article offers a hybrid method for crowd counting that combines Mask-RCNN (MRCNN) and a bidirectional convolutional long-term memory network (ConvLSTM), dubbed (CC: MRCNN-biCLSTM). The CC: MRCNN-biCLSTM is based on the Mask-RCN; it first segments instances and generates density maps, which are passed into adversarial learning during the training phase. Finally, the bidirectional convolutional LSTM is being used to return metrics and counts for individuals within a group of individuals. Following that, the suggested activity detection technique based on the Bayesian non-linear filter AD-BNF is used to identify a person’s activity. Additionally, the suggested approach resolves human grouping and enhances metric performance. Extensive studies demonstrate that the suggested method outperforms more sophisticated techniques on four frequently used difficult criteria for density map precision and quality.
Keywords: Mask-RCNN, bidirectional ConvLSTM, cluster counting, adversarial learning, activity detection
DOI: 10.3233/JIFS-220503
Journal: Journal of Intelligent & Fuzzy Systems, vol. 43, no. 5, pp. 6505-6520, 2022
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