Knowledge Agora



Similar Articles

Title The Smart in Smart Cities: A Framework for Image Classification Using Deep Learning
ID_Doc 39691
Authors Al-Qudah, R; Khamayseh, Y; Aldwairi, M; Khan, S
Title The Smart in Smart Cities: A Framework for Image Classification Using Deep Learning
Year 2022
Published Sensors, 22, 12
Abstract The need for a smart city is more pressing today due to the recent pandemic, lockouts, climate changes, population growth, and limitations on availability/access to natural resources. However, these challenges can be better faced with the utilization of new technologies. The zoning design of smart cities can mitigate these challenges. It identifies the main components of a new smart city and then proposes a general framework for designing a smart city that tackles these elements. Then, we propose a technology-driven model to support this framework. A mapping between the proposed general framework and the proposed technology model is then introduced. To highlight the importance and usefulness of the proposed framework, we designed and implemented a smart image handling system targeted at non-technical personnel. The high cost, security, and inconvenience issues may limit the cities' abilities to adopt such solutions. Therefore, this work also proposes to design and implement a generalized image processing model using deep learning. The proposed model accepts images from users, then performs self-tuning operations to select the best deep network, and finally produces the required insights without any human intervention. This helps in automating the decision-making process without the need for a specialized data scientist.
PDF https://www.mdpi.com/1424-8220/22/12/4390/pdf?version=1654842311

Similar Articles

ID Score Article
40182 Shi, D; Song, LX Research on the Application of Deep Learning Technology Oriented to the Construction and Innovation of Smart City Image Cognition(2022)
39793 Sun, P; Draughon, G; Hou, R; Lynch, JP Automated Human Use Mapping of Social Infrastructure by Deep Learning Methods Applied to Smart City Camera Systems(2022)Journal Of Computing In Civil Engineering, 36, 4
39628 Aryal, J; Dutta, R Smart City and Geospatiality: Hobart Deeply Learned(2015)
39543 Altundogan, TG; Karakose, M Image Processing and Deep Neural Image Classification Based Physical Feature Determiner for Traffic Stakeholders(2019)
79313 Rahman, AKMM; Zaber, M; Cheng, QW; Nayem, AS; Sarker, A; Paul, O; Shibasaki, R Applying State-of-the-Art Deep-Learning Methods to Classify Urban Cities of the Developing World(2021)Sensors, 21, 22
44370 Kang, QQ; Ding, X Urban management image classification approach based on deep learning(2021)Journal Of Ambient Intelligence And Smart Environments, 13, 5
40768 Demirtas, T; Parlak, IB A Multi-channel Deep Learning Architecture for Understanding the Urban Scene Semantics(2022)
36494 Chen, Q; Wang, W; Wu, FY; De, S; Wang, RL; Zhang, BL; Huang, X A Survey on an Emerging Area: Deep Learning for Smart City Data(2019)Ieee Transactions On Emerging Topics In Computational Intelligence, 3, 5
39716 Bhattacharya, S; Somayaji, SRK; Gadekallu, TR; Alazab, M; Maddikunta, PKR A review on deep learning for future smart cities(2022)Internet Technology Letters, 5, 1
40308 Mahamuni, CV; Sayyed, Z; Mishra, A Machine Learning for Smart Cities: A Survey(2022)
Scroll