A Novel Ensemble Learning Approach of Deep Learning Techniques to Monitor Distracted Driver Behaviour in Real Time

Author(s):  
Hafiz Umer Draz ◽  
Muhammad Zeeshan Khan ◽  
Muhammad Usman Ghani Khan ◽  
Amjad Rehman ◽  
Ibrahim Abunadi
2020 ◽  
Vol 16 (4) ◽  
pp. 19-36
Author(s):  
Anveshrithaa Sundareswaran ◽  
Lavanya K.

Escalating traffic congestion in large and rapidly evolving metropolitan areas all around the world is one of the inescapable problems in our daily lives. In light of this situation, traffic monitoring and analytics is becoming the need of the hour in today's world. Real-time traffic analysis requires processing of data streams that are being generated continuously in real time to gain quick insights. The challenge of analyzing streaming data for real-time prediction can be overcome by exploiting deep learning techniques. Taking this as a motivation, this work aims to integrate big data technologies and deep learning techniques to develop a real-time data stream processing model for vehicle traffic forecast using ensemble learning approach. Real-time traffic data from an API is streamed using a distributed streaming platform called Kafka into Apache Spark where it is processed, and the traffic flow is predicted by a neural network ensemble model. This will reduce the travel time, cost, and energy through efficient decision making, thus having a positive impact on the environment.


Face recognition plays a vital role in security purpose. In recent years, the researchers have focused on the pose illumination, face recognition, etc,. The traditional methods of face recognition focus on Open CV’s fisher faces which results in analyzing the face expressions and attributes. Deep learning method used in this proposed system is Convolutional Neural Network (CNN). Proposed work includes the following modules: [1] Face Detection [2] Gender Recognition [3] Age Prediction. Thus the results obtained from this work prove that real time age and gender detection using CNN provides better accuracy results compared to other existing approaches.


2021 ◽  
Vol 1828 (1) ◽  
pp. 012001
Author(s):  
Yeoh Keng Yik ◽  
Nurul Ezaila Alias ◽  
Yusmeeraz Yusof ◽  
Suhaila Isaak

Author(s):  
Ismail Nasri ◽  
Mohammed Karrouchi ◽  
Hajar Snoussi ◽  
Abdelhafid Messaoudi ◽  
Kamal Kassmi

IoT ◽  
2020 ◽  
Vol 1 (2) ◽  
pp. 551-604
Author(s):  
Damien Warren Fernando ◽  
Nikos Komninos ◽  
Thomas Chen

This survey investigates the contributions of research into the detection of ransomware malware using machine learning and deep learning algorithms. The main motivations for this study are the destructive nature of ransomware, the difficulty of reversing a ransomware infection, and how important it is to detect it before infecting a system. Machine learning is coming to the forefront of combatting ransomware, so we attempted to identify weaknesses in machine learning approaches and how they can be strengthened. The threat posed by ransomware is exceptionally high, with new variants and families continually being found on the internet and dark web. Recovering from ransomware infections is difficult, given the nature of the encryption schemes used by them. The increase in the use of artificial intelligence also coincides with this boom in ransomware. The exploration into machine learning and deep learning approaches when it comes to detecting ransomware poses high interest because machine learning and deep learning can detect zero-day threats. These techniques can generate predictive models that can learn the behaviour of ransomware and use this knowledge to detect variants and families which have not yet been seen. In this survey, we review prominent research studies which all showcase a machine learning or deep learning approach when detecting ransomware malware. These studies were chosen based on the number of citations they had by other research. We carried out experiments to investigate how the discussed research studies are impacted by malware evolution. We also explored the new directions of ransomware and how we expect it to evolve in the coming years, such as expansion into IoT (Internet of Things), with IoT being integrated more into infrastructures and into homes.


2019 ◽  
Vol 199 ◽  
pp. 216-222 ◽  
Author(s):  
Seonghyeon Kim ◽  
Seokwoo Kang ◽  
Kwang Ryel Ryu ◽  
Giltae Song

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