Amrutha C.V, C. Jyotsna, Amudha J, Deep Learning Approach for Suspicious Activity
Detection from Surveillance Video, Proceedings of the Second International Conference on Innovative Mechanisms for Industry Applications (ICIMIA 2020) Computer Science & Engineering, Amrita School of Engineering, Bengaluru, Amrita Vishwa Vidyapeetham, India,pp.335-339, Available at: https://2u.pw/TOvOD
[1] - Guoqing Cai, Quan Zhang, Beichang Liu, Zhengyu Jin and Jili Qian, Deep Learning‐Based Recognition and Visualization of Human Motion Behavior, Academic Journal of Science and Technology, Information Studies, Trine University, Phoenix AZ, USA ,Vol. 10, No. 1, 2024, pp.50-55.
[1] - Nitin Liladhar Rane, Ömer Kaya and Jayesh Ran, Artificial intelligence, machine learning, and deep learning technologies as catalysts for industry 4.0, 5.0, and society 5, Deep Science Publishing,pp. 1-27, Available at: https://2u.pw/bfsls
[1] - Mathias Felipe de-Lima-Santos, Ramón Salaverría, From Data Journalism to Artificial Intelligence: Challenges Faced by La Nación in Implementing Computer Vision in News Reporting, Data Journalism to Artificial Intelligence: Challenges Faced by La Nación in Implementing Computer Vision in News Reporting , Palabra Clave, Universidad de La Sabana, Spain, vol. 24, no. 3, e2437, 2021. Available at: https://www.redalyc.org/journal/649/64970667007/html/
[1] - Leonard Matheus Wastupranata, Seong G. Kong and Lipo Wang, Deep Learning for Abnormal Human Behavior Detection in Surveillance Videos—A Survey, Electronics 2024, 13 , available at: file:///C:/Users/hp/Downloads/electronics-13-02579%20(2).pdf
[1] - Fangming Qu, Nolan Dang, Borko Furht and Mehrdad Nojoumian, Comprehensive study of driver behavior monitoring systems using computer vision and machine learning techniques, Journal of Big Data, Electrical Engineering and Computer Science, Florida Atlantic University , (2024), pp 1-44. Available at: https://2u.pw/wOxvC
[1] -D Marichamy, M Sankar, P Sivaprakash and others, Machine Learning Based Abnormal Human Behaviour Detection, 2nd International Conference on Intelligent Cyber Physical Systems and Internet of Things, ICoICI 2024Coimbatore28 August 2024through 30 August 2024, pp. 1155 – 1159 . Available at: https://n9.cl/4teqf
[1] - Guoqing Cai, Quan Zhang, Beichang Liu, Zhengyu Jin and Jili Qian, Deep Learning‐Based Recognition and Visualization of Human Motion Behavior,op.cit.
[1] - Nikoleta Manakitsa, George S. Maraslidis, Lazaros Moysis, and George F. Fragulis, A Review of Machine Learning and Deep Learning for Object Detection, Semantic Segmentation, and Human Action Recognition in Machine and Robotic Vision, Technologies , Greece,2024, 12(2), 15, Available at: https://www.mdpi.com/2227-7080/12/2/15
[1] - Chuan-Wang Chang, Chuan-Yu Chang and You-Ying Lin, A hybrid CNN and LSTM-based deep learning model for abnormal behavior detection, Multimedia Tools and Applications (2022) 81:11825–11843 , Available at: https://2h.ae/hixu
[1] - Zhu, Jinnuo and others, Machine Learning Human Behavior Detection Mechanism Based on Python Architecture, Mathematics, Volume 10, Issue 17September 2022 Article number 3159, pp.2-31, Available at: https://2h.ae/TENV
[1] - Dohare, Anand Kumar, Sharma, Megha and Pathak, Ravi Shanker, Human behaviour analysis and face detection using machine learning, 4th International Conference on Advances in Computing, Communication Control and Networking, ICAC3N 2022, pp . 1239 – 1244. Available at: https://2h.ae/niWB
[1] - Cui, Chenxin and Xu, Ruofeng, Multiple Machine Learning Algorithms for Human Smoking Behavior Detection, 2nd International Conference on Machine Learning and Intelligent Systems Engineering, MLISE 2022 , Pp. 240 – 244, Available at: https://2h.ae/cneI
[1] - Neil Shah, Nandish Bhagat and Manan Shah, Crime forecasting: a machine learning and computer vision approach to crime prediction and prevention, Visual Computing for Industry Biomedicine, and Art, (2021) 4:9, Available at: https://2h.ae/rpDw
[1] - Amrutha C.V, C. Jyotsna, Amudha J, Deep Learning Approach for Suspicious Activity Detection from Surveillance Video, opcit.
[1] - MONAGI H. ALKINANI, WAZIR ZADA KHAN and QURATULAIN ARSHAD, Detecting Human Driver Inattentive and Aggressive Driving Behavior Using Deep Learning: Recent Advances, Requirements and Open Challenges, SPECIAL SECTION ON ARTIFICIAL INTELLIGENCE (AI)-EMPOWERED INTELLIGENT TRANSPORTATION SYSTEMS, IEEE ACCESS,v 8, Saudi Arabia, 2020, Available at: https://ieeexplore.ieee.org/stamp/stamp.jsp?arnumber=9107077
[1] - Jia Lu ,Deep Learning Methods for Human Behavior Recognition, phd thesis, the Auckland University of Technology, Computer and Information Sciences, School of Engineering, Computer & Mathematical Science, New Zealand, 2020.
[1] - ASHISH SHARMA, NEERAJ VARSHNEY, Identification and Detection of Abnormal Human Activities using Deep Learning Techniques, European Journal of Molecular & Clinical Medicine, Volume 7, Issue 4, 2020
[1] - Brady D. Lund, Diffusion of Innovations: Still a Relevant Theory for Studying Library Technology in the Age of AI?, Library Hi Tech News, 2025, Available at: https://2u.pw/5wU54
[1] -Clay Halton, Diffusion of Innovations Theory: Definition and Examples, 2023, Available at: https://www.investopedia.com/terms/d/diffusion-of-innovations-theory.asp
- Aldanani, A. (2023), 'uwajih aistikhdamat tatbiq shat ji bi ti fi almajal al'iielamii: dirasat astikshafiati, majalat alealaqat aleamati, 47(2). 45- 77.
- Al-Abd, A. (2011), nazariaat al'iielam watatbiqatuh alearabia (Alqahira: dar Aalfikr alearabiati).
- Tawati, N. (2013). makluhan marshal: qira'at fi nazariaatih bayn al'ams walyawma, majalat aleulum al'iinsaniat waliajtimaeiati, jamieat Aljazayir, 10(2).
- Amal, K. (2021). dawr wasayit al'iielam aljadid fi nashr alshaayieat wast altalabat aljamieiiyn, dirasatan maydaniatan ealaa eayinat min talabat jamieat muhamad alsidiyq bin yahii, risalat majistir, ghayr manshura (aljazayar: jamieat Mohamed Seddik Ben Yahia, Jijel, kuliyat aleulum al'iinsaniat walaijtimaeiati, qism al'iielam walaitisali,).
[1] - Hallström Jonas , Embodying the past, designing the future: Technological determinism Reconsidered in technology education, International Journal of Technology and Design Education, 2022, 32, pp: 17-31
- Ali, A. (2017), aistikhdam namudhaj qabul altiknulujya (TAM) litaqasiy faeaaliat altiknulujia almusanidat alqayimat ealaa tatbiqat altaealum altakayufiat alnaqaalat litamkin dhawi al'iieaqat albasariat min altaealumi, majalat kuliyat altarbiati, jamieat Al'azhar, 716(2).
- Abdel Hamid, A. (2020), taqabbul tulaab al'iielam fi misr wal'iimarat litatbiqat aldhaka' alaistinaeii watathiriha ealaa mustaqbalihim alwazifi" dirasatan fi 'iitar namudhaj qabul altiknulujia, almajalat almisriat libuhuth alraay aleami, kuliyat al'iielami, jamieat Alqahira, markaz buhuth alraay aleama, 2(1). 341-409.
[1] - Ben Nancholas, Computer vision and the algorithms that help computers understand visual information, University of Wolverhampton, November 25, 2024, Available at: https://2u.pw/AKFIq
[1] - What is computer vision?, op.cit.
[1] - Computer vision, Wikipedia, op.cit.
[1] - Nikoleta Manakitsa, George S. Maraslidis, Lazaros Moysis, and George F. Fragulis, A Review of Machine Learning and Deep Learning for Object Detection, Semantic Segmentation, and Human Action Recognition in Machine and Robotic Vision, Technologies 2024, 12(2), 15, available at: https://www.mdpi.com/2227-7080/12/2/15
[1] - Ben Nancholas, Computer vision and the algorithms that help computers understand visual information , University of Wolverhampton, November 25, 2024, Available at: https://goo.su/REtNGH
[1] - Amrutha C.V, C. Jyotsna, Amudha J, Deep Learning Approach for Suspicious Activity Detection from Surveillance Video, Proceedings of the Second International Conference on Innovative Mechanisms for Industry Applications (ICIMIA 2020), Available at: https://goo.su/5JdIU2
[1] - a) Nikoleta Manakitsa, George S. Maraslidis, Lazaros Moysis, and George F. Fragulis, A Review of Machine Learning and Deep Learning for Object Detection, Semantic Segmentation, and Human Action Recognition in Machine and Robotic Vision, Technologies 2024, 12(2), 15, available at: https://www.mdpi.com/2227-7080/12/2/15
[1] - Guoqing Cai, Quan Zhang, Beichang Liu, Zhengyu Jin and Jili Qian, Deep Learning‐Based Recognition and Visualization of Human Motion Behavior, Academic Journal of Science and Technology, Vol. 10, No. 1, 2024
[1] - Leonard MatheusWastupranata, Seong G. Kong and Lipo Wang, Deep Learning for Abnormal Human Behavior Detection in Surveillance Videos—A Survey, Electronics 2024, 13 , available at: file:///C:/Users/hp/Downloads/electronics-13-02579%20(2).pdf