2021
DOI: 10.3390/bdcc5040050
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Advances in Convolution Neural Networks Based Crowd Counting and Density Estimation

Abstract: Automatically estimating the number of people in unconstrained scenes is a crucial yet challenging task in different real-world applications, including video surveillance, public safety, urban planning, and traffic monitoring. In addition, methods developed to estimate the number of people can be adapted and applied to related tasks in various fields, such as plant counting, vehicle counting, and cell microscopy. Many challenges and problems face crowd counting, including cluttered scenes, extreme occlusions, … Show more

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Cited by 16 publications
(10 citation statements)
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“…Several studies have been conducted in the past, which typically focus on individual areas of crowd analysis. For example, Sindagi and Patel (2018), Cenggoro (2019), Ilyas, Shahzad, and Kim (2020), Gao et al (2020), Luo, Lu, and Zhang (2020), Gouiaa, Akhloufi, and Shahbazi (2021), Fan et al (2022), and Khan, Menouar, and Hamila (2023c) cover crowd counting research and mainly discuss the advancements in model architectures, benchmarking, and datasets. Hu et al (2004b), Luca et al (2020), andKumar (2021) focus on crowd motion analysis, discussing crowd motion predictions, flow classification, and behavior analysis using motion patterns.…”
Section: Similar and Related Studiesmentioning
confidence: 99%
See 1 more Smart Citation
“…Several studies have been conducted in the past, which typically focus on individual areas of crowd analysis. For example, Sindagi and Patel (2018), Cenggoro (2019), Ilyas, Shahzad, and Kim (2020), Gao et al (2020), Luo, Lu, and Zhang (2020), Gouiaa, Akhloufi, and Shahbazi (2021), Fan et al (2022), and Khan, Menouar, and Hamila (2023c) cover crowd counting research and mainly discuss the advancements in model architectures, benchmarking, and datasets. Hu et al (2004b), Luca et al (2020), andKumar (2021) focus on crowd motion analysis, discussing crowd motion predictions, flow classification, and behavior analysis using motion patterns.…”
Section: Similar and Related Studiesmentioning
confidence: 99%
“…For example, Sindagi and Patel (2018), Cenggoro (2019), Ilyas, Shahzad, and Kim (2020), Gao et al. (2020), Luo, Lu, and Zhang (2020), Gouiaa, Akhloufi, and Shahbazi (2021), Fan et al. (2022), and Khan, Menouar, and Hamila (2023c) cover crowd counting research and mainly discuss the advancements in model architectures, benchmarking, and datasets.…”
Section: Introductionmentioning
confidence: 99%
“…Consequently, the UAV with RGB imaging characterized by high resolution and flexible acquisition is an effective way to count flower clusters. Deep learning methods for crop counting in RGB imaging have been presented in recent years [ 23 , 24 ]. Samiei et al [ 25 ] designed a deep learning CNN network to learn the cotyledon opening during plant seedling development.…”
Section: Introductionmentioning
confidence: 99%
“…In fact, this is a realistic assumption in some situations where the behavior of the crowds is known and can be predicted. To do that, there are many proposed methods in the literature that can be used to predict crowds characteristics and behavior based on machine learning techniques [56][57][58][59][60][61][62][63][64]. Tanks to this prediction, a CMA system can have a "clairvoyance" and therefore more strategic assignments of the UAVs that takes into account the future behaviors of crowds.…”
Section: Introductionmentioning
confidence: 99%