9 results on '"S. R. Vijayalakshmi"'
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2. Electronics in 2030
- Author
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S. R. Vijayalakshmi and S. Muruganand
- Published
- 2022
- Full Text
- View/download PDF
3. Embedded Vision : Mastering Advanced Techniques for Real-Time Image Processing and Analysis
- Author
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Mercury Learning and Information, S. R. Vijayalakshmi, S. Muruganand, Mercury Learning and Information, S. R. Vijayalakshmi, and S. Muruganand
- Abstract
Learn the fundamentals and applications of embedded vision systems, covering various industries and practical examples. Key Features Comprehensive guide to embedded vision systems Detailed coverage of design and implementation across industries Practical real-time examples for hands-on learning Book DescriptionEmbedded vision integrates computer vision into machines using algorithms to interpret images or videos. This book serves as an introductory guide for designing vision-enabled embedded products, with applications in AI, machine learning, industrial, medical, automotive, and more. It covers hardware architecture, software algorithms, applications, and advancements in cameras, processors, and sensors. The course begins with an overview of embedded vision, followed by industrial and medical vision applications. It then delves into video analytics, digital image processing, and camera-image sensors. Subsequent chapters cover embedded vision processors, computer vision, and AI integration. The final chapter presents real-time vision-based examples. Understanding these concepts is vital for developing advanced vision-enabled machines. This book takes readers from the basics to advanced topics, blending theoretical knowledge with practical applications. It is an essential resource for mastering embedded vision technology across various industries. What you will learn Understand the basics of embedded vision systems Design and implement vision processors Apply digital image processing techniques Utilize AI in vision systems Develop real-time vision applications Integrate vision sensors and cameras effectively Who this book is for The ideal audience for this book includes engineers, developers, and researchers working in the field of embedded vision systems. A basic understanding of computer vision and digital image processing is recommended.
- Published
- 2024
4. Image Processing Color Model Techniques and Sensor Networking in Identifying Fire from Video Sensor Node
- Author
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S. R. Vijayalakshmi
- Subjects
Color model ,Computer science ,Visual sensor network ,business.industry ,Sensor node ,Sensor networking ,Computer vision ,Image processing ,Artificial intelligence ,business - Published
- 2017
- Full Text
- View/download PDF
5. Real Time Monitoring of Wireless Fire Detection Node
- Author
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S. Muruganand and S. R. Vijayalakshmi
- Subjects
040101 forestry ,Engineering ,Brooks–Iyengar algorithm ,Fire detection ,business.industry ,Node (networking) ,Real-time computing ,04 agricultural and veterinary sciences ,02 engineering and technology ,Software ,Sensor node ,0202 electrical engineering, electronic engineering, information engineering ,0401 agriculture, forestry, and fisheries ,General Earth and Planetary Sciences ,Software design ,Wireless ,020201 artificial intelligence & image processing ,business ,Wireless sensor network ,General Environmental Science - Abstract
This work presents the design of low rate and low power sensor node in wireless based sensor network for early detection and monitoring of fire in environment. It uses the DHT11 digital temperature – humidity sensor for measurement and MSP430 microcontroller for processing and implementing best algorithm from the comparison algorithm and DST algorithm using Dempster-Shaffer Theory for fire detection. The detected information is transmitted to the computer system through XBeepro for short distance wirelessly. The performance of algorithms are analyzed and tested with the metric un_detect fire. The information is shared in real time to the owner/ fire station/ police and all other responsible persons by the computer system using teamviewer software through Internet. The DST has more software design complexity than comparison algorithm. But it gives better performance than comparison.
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- 2016
- Full Text
- View/download PDF
6. Fire Recognition Based on Sensor node and Feature of Video Smoke
- Author
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S. R. Vijayalakshmi and S. Muruganand
- Subjects
Discrete wavelet transform ,Background subtraction ,business.industry ,Computer science ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Optical flow ,Video processing ,Feature (computer vision) ,Sensor node ,RGB color model ,Computer vision ,Node (circuits) ,Artificial intelligence ,business - Abstract
Gaussian mixed model, LK optical flow method and background subtraction from foreground method are used to extract the fire and smoke region in foreground of video image. Multi feature of fire characteristics are used to extract the information. Colour feature of suspected region are extracted according to the colour model RGB and HSI spaces. Background blur feature is extracted using two dimensional discrete wavelet transform. If smoke appears in scene, the contour edge of the background would become blurry. The motion direction feature is extracted using LK optical flow method and gaussion mixed model. The DHT 11 digital temperature - humidity sensor in sensor node is used to extract temperature and humidity values for measurement and TIMSP430 micro controller for processing the information. The video node and sensor node extracted information are combined to detect the possibility of fire in the area during worst season conditions. By this method, the accuracy of fire and smoke detection is improved even in the worst environmental condition such as rainy weather. From the simulated and experimental results, the proposed method improves the accuracy and detection rate. Combination of sensor output and video output give excellent value in finding smoke or fire from videos. They reduces false detection rate of detecting smoke from non-smoke videos. It can be used in outdoor large environment.
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- 2018
- Full Text
- View/download PDF
7. Fire alarm based on spatial temporal analysis of fire in video
- Author
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S. Muruganand and S. R. Vijayalakshmi
- Subjects
Smoke ,Fire detection ,business.industry ,Computer science ,Frame (networking) ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Video content analysis ,Motion detection ,Fire alarm system ,ALARM ,Digital image processing ,Computer vision ,Artificial intelligence ,business - Abstract
Fire alarm system is based on detection of fire from video acquisition input data. This is done with the help of digital image processing techniques and embedded vision. It is based on vision-based fire detection system. This approach integrates colour, spatial, temporal and motion information to locate fire regions in video frames. The characteristics of burning flame and spatial temporal features of smoke combination is used to remove spurious fake fire regions. This video based fire alarm systems has stages such as frame conversion, fire and smoke colour detection, motion detection, spatial temporal analysis. Fire alarm will be activated when the system detects the occurrence of fire in a certain position and time interval surpasses the threshold.
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- 2018
- Full Text
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8. Smoke detection in video images using background subtraction method for early fire alarm system
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S. Muruganand and S. R. Vijayalakshmi
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Smoke ,Background subtraction ,business.industry ,Computer science ,Frame (networking) ,020101 civil engineering ,02 engineering and technology ,Fire alarm system ,Video image ,0201 civil engineering ,Constant false alarm rate ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Computer vision ,Artificial intelligence ,Detection rate ,business - Abstract
This paper proposes an effective method to detect smoke in videos. The technique background subtraction is used to segment moving regions in fire video frame. The fuzzy c-means (FCM) method is used to cluster only smoke regions from these moving regions. Experimental results show that the proposed smoke detection algorithm performs well than the conventional smoke detection algorithms in terms of accuracy of smoke detection. It also provides low false alarm rate and high reliability in open and large spaces. The true positive value of all smoke frames and its percentage of overall smoke detection rate is more than 85%. The false positive value of non-smoke frames and its percentage of overall smoke detection rate is less than 10%. Hence overall smoke detection rate is increased.
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- 2017
- Full Text
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9. A survey of Internet of Things in fire detection and fire industries
- Author
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S. R. Vijayalakshmi and S. Muruganand
- Subjects
Engineering ,Service layer ,Fire detection ,business.industry ,computer.internet_protocol ,Node (networking) ,Service-oriented architecture ,Network layer ,Computer security ,computer.software_genre ,Identification (information) ,Cellular network ,business ,Wireless sensor network ,computer ,Computer network - Abstract
Internet of Things (IoT) provide a good chance to build powerful system in fire industry. The growing ubiquity of radio-frequency identification (RFID), wireless sensor network and mobile give fire area related applications by high leveraging level. This paper review about the current research, technologies and applications of IoT in flre related industries. This paper done a survey of identifying research trends and challenges in fire industries and summarizes systematically. The fire IoT aims to connect different things over the networks related with fire. Service Oriented Architecture is applied to support fire IoT. In that layers interact each other for monitoring fire and products. This paper functionally realizes some of the layer required for fire monitoring and industry. Sensing layer is functionally realized with WSN node with sensors, RFID tagged device and Video node for fire and product monitoring. All things such as sensor network, mobile network are connected together in the network layer. Service layer and interface layer are used to realize Mobile node data, WSN node data display and graph display for the fire related parameters.
- Published
- 2017
- Full Text
- View/download PDF
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