Keyword search (4,163 papers available)

"Khan S" Authored Publications:

Title Authors PubMed ID
1 The Smart in Smart Cities: A Framework for Image Classification Using Deep Learning Al-Qudah R; Khamayseh Y; Aldwairi M; Khan S; 35746171
ENCS
2 Is subthreshold depression in adolescence clinically relevant? Noyes BK; Munoz DP; Khalid-Khan S; Brietzke E; Booij L; 35429521
PSYCHOLOGY
3 Biallelic variants in TRAPPC10 cause a microcephalic TRAPPopathy disorder in humans and mice Rawlins LE; Almousa H; Khan S; Collins SC; Milev MP; Leslie J; Saint-Dic D; Khan V; Hincapie AM; Day JO; McGavin L; Rowley C; Harlalka GV; Vancollie VE; Ahmad W; Lelliott CJ; Gul A; Yalcin B; Crosby AH; Sacher M; Baple EL; 35298461
BIOLOGY
4 Maturation of temporal saccade prediction from childhood to adulthood: predictive saccades, reduced pupil size and blink synchronization Calancie OG; Brien DC; Huang J; Coe BC; Booij L; Khalid-Khan S; Munoz DP; 34759032
PSYCHOLOGY
5 Reductions of Anxiety Symptoms, State Anxiety, and Anxious Arousal in Youth Playing the Videogame MindLight Compared to Online Cognitive Behavioral Therapy Tsui TYL; DeFrance K; Khalid-Khan S; Granic I; Hollenstein T; 34403591
PSYCHOLOGY
6 Methodological and clinical challenges associated with biomarkers for psychiatric disease: A scoping review. Kirkpatrick RH; Munoz DP; Khalid-Khan S; Booij L; 33221025
PSYCHOLOGY
7 DNA methylation differences in stress-related genes, functional connectivity and gray matter volume in depressed and healthy adolescents. Chiarella J, Schumann L, Pomares FB, Frodl T, Tozzi L, Nemoda Z, Yu P, Szyf M, Khalid-Khan S, Booij L 32479312
PSYCHOLOGY
8 Are biophenotyes the key to select antinflammatory-responsive individuals with major depression? Brietzke E, Booij L, Wieck A, Soares CN, Roberts N, Khalid-Khan S 31476416
PSYCHOLOGY
9 Eating disorders and substance use in adolescents: How substance users differ from nonsubstance users in an outpatient eating disorders treatment clinic. Kirkpatrick R, Booij L, Vance A, Marshall B, Kanellos-Sutton M, Marchand P, Khalid-Khan S 30638270
PSYCHOLOGY
10 Use of routinely available clinical, nutritional, and functional criteria to classify cachexia in advanced cancer patients. Vigano AAL, Morais JA, Ciutto L, Rosenthall L, di Tomasso J, Khan S, Olders H, Borod M, Kilgour RD 27793524
HKAP
11 Hypertension management research priorities from patients, caregivers, and healthcare providers: A report from the Hypertension Canada Priority Setting Partnership Group. Khan N, Bacon SL, Khan S, Perlmutter S, Gerlinsky C, Dermer M, Johnson L, Alves F, McLean D, Laupacis A, Pui M, Berg A, Flowitt F, Hypertension Canada Priority Setting Partnership Group 28944609
HKAP

 

Title:The Smart in Smart Cities: A Framework for Image Classification Using Deep Learning
Authors:Al-Qudah RKhamayseh YAldwairi MKhan S
Link:https://pubmed.ncbi.nlm.nih.gov/35746171/
DOI:10.3390/s22124390
Publication:Sensors (Basel, Switzerland)
Keywords:automationdeep learningimagessmart citytransfer learningzoning
PMID:35746171 Category: Date Added:2022-06-24
Dept Affiliation: ENCS
1 Department of Computer Science and Software Engineering, Concordia University, Montreal, QC H3G 1M8, Canada.
2 College of Technological Innovation, Zayed University, Abu Dhabi 144534, United Arab Emirates.
3 Faculty of Computer and Information Technology, Jordan University of Science and Technology, Irbid 22110, Jordan.
4 ICT, Algonquin College, Ottawa, ON K2G 1V8, Canada.

Description:

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.





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