University certificate
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Description
Become an expert in Robotics and Computer Vision in 24 months with this TECH Global University advanced master’s degree. Enroll now"
The rise of Artificial Intelligence and Robotics is changing the technological, economic and social landscape globally. In this context, specialization
in areas such as Machine Vision is crucial to keep up to date in an environment of rapid advances and disruptive changes. The increasing interaction between humans and machines, and the need to process visual information efficiently, requires highly skilled professionals to lead innovation and address the challenges.Â
An ideal scenario for engineering professionals who want to advance an emerging sector. For this reason, TECH Global University has designed this advanced master’s degree in Robotics and Artificial Vision, which provides comprehensive training in these emerging disciplines, covering topics such as Augmented Reality, Artificial Intelligence and visual information processing in machines, among others.Â
A program that offers a theoretical-practical approach that allows graduates to apply their knowledge in real environments. All this, in addition, in a 100% online university degree, which allows students to adapt their learning to their personal and professional responsibilities. Thus, they will have access to high quality educational materials, such as videos, essential readings and detailed resources, providing them with a global vision of Robotics and Artificial Vision.Â
Likewise, thanks to the Relearning method, based on the continuous repetition of the most important contents, the student will reduce the hours of study and will consolidate the most important concepts in a simpler way.Â
A unique degree in the academic panorama that is also distinguished by the excellent team of specialists in this field, by the excellent team of specialists in this field. His excellent knowledge and experience and experience in the sector is evident in an advanced syllabus, which only TECH Global University. Â
Become an innovation leader and address ethical and safety challenges in creating innovative and effective solutions in different industry sectors"Â
This advanced master’s degree in Robotics and Artificial Vision contains the most complete and up-to-date program on the market. The most important features include: Â
- The development of case studies presented by IT experts
- The graphic, schematic, and practical contents with which they are created, provide scientific and practical information on the disciplines that are essential for professional practice
- Practical exercises where the self-assessment process can be carried out to improve learning
- Special emphasis on innovative methodologies in the development of Robots and Artificial VisionÂ
- Theoretical lessons, questions to the expert, debate forums on controversial topics, and individual reflection assignmentsÂ
- Content that is accessible from any fixed or portable device with an Internet connectionÂ
Take advantage of the opportunity to study in a 100% online program, adapting your study time to your personal and professional circumstances"
Its teaching staff includes professionals from the field of Robotics, who bring to this program the experience of their work, as well as recognized specialists from reference societies and prestigious universities.Â
Its multimedia content, developed with the latest educational technology, will provide the professional with situated and contextual learning, i.e., a simulated environment that will deliver an immersive learning experience, programmed to prepare in real situations.Â
This program is designed around Problem-Based Learning, whereby students must try to solve the different professional practice situations that arise throughout the program. For this purpose, professionals will be assisted by an innovative interactive video system created by renowned and experienced experts.
Analyze through the best didactic material how to carry out the tuning and parameterization of SLAM algorithms"Â
Delve whenever and wherever you want into the advances achieved in Deep learning"Â
Objectives
Thanks to this degree, the professional engineer will acquire the necessary knowledge to face challenges in the field of Robotics and Machine Vision,
This will allow them to stand out in the constantly evolving labor market and provide practical and effective solutions in their field of work. For this purpose, TECH Global University provides the most innovative pedagogical tools and a specialized teaching staff that will answer any questions students may have about the content of this program.
The case studies of this university degree will give you an eminently practical approach to Robot Design and Modeling"Â
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General Objectives
- Understand the mathematical foundations for kinematic and dynamic modeling of robotsÂ
- Delve into the use of specific technologies for the creation of robot architectures, robot modeling and simulationÂ
- Generate specialized knowledge on Artificial IntelligenceÂ
- Develop the technologies and devices most commonly used in industrial automationÂ
- Identify the limits of current techniques to identify bottlenecks in robotic applicationsÂ
- Obtain an overview of the devices and hardware used in the computer vision world
- Analyze the different fields in which vision is applied
- Identify where the technological advances in vision are at the momentÂ
- Assess what is being researched and what the next few years hold
- Establish a solid foundation in the understanding of digital image processing algorithms and techniques
- Assess fundamental computer vision techniquesÂ
- Analyze advanced image processing techniquesÂ
- Introducing the open 3D libraryÂ
- Analyze the advantages and difficulties of working in 3D instead of 2D
- Introduce neural networks and examine how they workÂ
- Analyze metrics for proper learningÂ
- Analyze existing metrics and toolsÂ
- Examine the pipeline of an image classification networkÂ
- Analyze semantic segmentation neural networks and their metricsÂ
Specific Objectives
Module 1. Robotic. Robot Design and ModelingÂ
- Delve into the use of Gazebo Simulation TechnologyÂ
- Master the use of the URDF Robot Modeling languageÂ
- Develop specialized knowledge in the use of Robot Operating System technology
- Model and Simulate Manipulator Robots, Land Mobile Robots, Air Mobile Robots and Model and Simulate Aquatic Mobile Robots
Module 2. Intelligent Agents. Applying Artificial Intelligence to Robots and SoftbotsÂ
- Analyze the biological inspiration of Artificial Intelligence and intelligent agentsÂ
- Assess the need for intelligent algorithms in today's societyÂ
- Determine the applications of advanced Artificial Intelligence techniques on Intelligent AgentsÂ
- Demonstrate the strong connection between Robotics and Artificial IntelligenceÂ
- Establish the needs and challenges presented by Robotics that can be solved with Intelligent AlgorithmsÂ
- Develop concrete implementations of Artificial Intelligence AlgorithmsÂ
- Identify Artificial Intelligence algorithms that are established in today's society and their impact on daily life Â
Module 3. Deep LearningÂ
- Analyze the families that make up the artificial intelligence world
- Compile the main Frameworks of Deep LearningÂ
- Define neural networksÂ
- Present the learning methods of neural networksÂ
- Fundamentals of cost functionsÂ
- Establish the most important activation functionsÂ
- Examine regularization and normalization techniquesÂ
- Develop optimization methodsÂ
- Introduce initialization methods Â
Module 4. Robotics in the Automation of Industrial ProcessesÂ
- Analyze the use, applications and limitations of industrial communication networksÂ
- Establish machine safety standards for correct designÂ
- Develop clean and efficient programming techniques in PLCsÂ
- Propose new ways of organizing operations using state machinesÂ
- Demonstrate the implementation of control paradigms in real PLC applicationsÂ
- Fundamentalize the design of pneumatic and hydraulic installations in automationÂ
- Identify the main sensors and actuators in robotics and automationÂ
Module 5. Automatic Control Systems in Robotics
- Generate specialized knowledge for the design of nonlinear controllersÂ
- Analyze and study control problemsÂ
- Master control modelsÂ
- Design nonlinear controllers for robotic systemsÂ
- Implement controllers and assess them in a simulator
- Determine the different existing control architecturesÂ
- Examine the fundamentals of vision controlÂ
- Develop state-of-the-art control techniques such as predictive control or machine learning based control
Module 6. Robot Planning AlgorithmsÂ
- Establish the different types of planning algorithmsÂ
- Analyze the complexity of motion planning in roboticsÂ
- Develop techniques for environment modelingÂ
- Examine the pros and cons of different planning techniquesÂ
- Analyze centralized and distributed algorithms for robot coordinationÂ
- Identify the different elements in decision theoryÂ
- Propose learning algorithms for solving decision problems Â
Module 7. Computer VisionÂ
- Establish how the human vision system works and how an image is digitized
- Analyze the evolution of computer visionÂ
- Evaluate image acquisition techniquesÂ
- Generate specialized knowledge about illumination systems as an important factor when processing an image
- Specify what optical systems exist and evaluate their use
- Examine the 3D vision systems and how these systems provide depth to imagesÂ
- Develop the different existing systems outside the field visible to the human eye
Module 8. Applications and State-of-the-ArtÂ
- Analyze the use of computer vision in industrial applications
- Determine how vision is applied in the autonomous vehicle revolutionÂ
- Analyze images in content analysisÂ
- Develop Deep Learning algorithms for medical analysis and Machine Learning algorithms for operating room assistance
- Analyze the use of vision in commercial applications
- Determine how robots have eyes thanks to computer  vision and how it is applied in space travelÂ
- Establish what augmented reality is and fields of use
- Analyze the Cloud Computing revolutionÂ
- Present the State of the Art and what the coming years have in store for usÂ
Module 9. Computer Vision Techniques in Robotics: Image Processing and AnalysisÂ
- Analyze and understand the importance of vision systems in robotics
- Establish the characteristics of the different perception sensors in order to choose the most appropriate ones according to the application
- Determine the techniques for extracting information from sensor dataÂ
- Apply visual information processing toolsÂ
- Design digital image processing algorithmsÂ
- Analyze and predict the effect of parameter changes on algorithm performanceÂ
- Assess and validate the developed algorithms in terms of resultsÂ
Module 10. Robot Visual Perception Systems with Machine LearningÂ
- Master the machine learning techniques most widely used today in academia and industryÂ
- Delve into the architectures of neural networks to apply them effectively in real problemsÂ
- Reuse existing neural networks in new applications using transfer learningÂ
- Identify new fields of application of generative neural networksÂ
- Analyze the use of learning techniques in other fields of robotics such as localization and mappingÂ
- Develop current technologies in the cloud to develop neural network-based technologiesÂ
- Examine the deployment of vision learning systems in real and embedded systems
Module 11. Visual SLAM. Robot Localization and Simultaneous Mapping Using Computer Vision Techniques
- Specify the basic structure of a Simultaneous Localization and Mapping (SLAM) system
- Identify the basic sensors used in Simultaneous Localization and Mapping (visual SLAM)Â
- Establish the boundaries and capabilities of visual SLAMÂ
- Compile the basic notions of projective and epipolar geometry to understand imaging projection processesÂ
- Identify the main visual SLAM technologies: Gaussian filtering, Optimization and loop closure detection
- Describe in detail the operation of the main visual SLAM algorithms
visual SLAM algorithms - Analyze how to carry out the tuning and parameterization of SLAM algorithms
Module 12. Application of Virtual and Augmented Reality Technologies to RoboticsÂ
- Determine the difference among the different types of realities
- Analyze the current standards for modeling virtual elements
- Examine the most commonly used peripherals in immersive environments
- Define geometric models of robotsÂ
- Assess physics engines for dynamic and kinematic modeling of robotsÂ
- Develop Virtual Reality and Augmented Reality projectsÂ
Module 13. Robot Communication and Interaction SystemsÂ
- Analyze current natural language processing strategies: heuristic, stochastic, neural network-based, reinforcement-based learning
- Assess the benefits and weaknesses of developing cross-cutting, or situation-focused, interaction systemsÂ
- Identify the environmental problems to be solved in order to achieve effective communication with the robotÂ
- Establish the tools needed to manage the interaction and discern the type of dialogue initiative to be pursuedÂ
- Combine pattern recognition strategies to infer the intentions of the interlocutor and respond in the best way to themÂ
- Determine the optimal expressiveness of the robot according to its functionality and environment, and apply emotional analysis techniques to adapt its responseÂ
- Propose hybrid strategies for interaction with the robot: vocal, tactile and visualÂ
Module 14. Digital Image ProcessingÂ
- Examine commercial and open-source digital image processing libraries
- Determine what a digital image is and evaluate the fundamental operations to be able to work with themÂ
- Introduce image filtersÂ
- Analyze the importance and use of histogramsÂ
- Present tools to modify images pixel by pixelÂ
- Propose image segmentation toolsÂ
- Analyze morphological operations and their applicationsÂ
- Determine the methodology in image calibrationÂ
- Evaluate methods for segmenting images with conventional vision
Module 15. Advanced Digital Image ProcessingÂ
- Examine advanced digital image processing filtersÂ
- Determine contour extraction and analysis toolsÂ
- Analyze object search algorithmsÂ
- Demonstrate how to work with calibrated imagesÂ
- Analyze mathematical techniques for geometry analysisÂ
- Evaluate different options in image compositingÂ
- Develop user interfaceÂ
Module 16. 3D Image ProcessingÂ
- Examine a 3D imageÂ
- Analyze the software used for 3D data processingÂ
- Developing open3DÂ
- Determine the relevant data in a 3D imageÂ
- Demonstrate visualization toolsÂ
- Establish denoising filtersÂ
- Propose Geometric Calculation toolsÂ
- Analyze object detection methodologiesÂ
- Evaluate triangulation and scene reconstruction methodsÂ
Module 17. Convolutional Neural Networks and Image ClassificationÂ
- Generate specialized knowledge on convolutional neural networksÂ
- Establish evaluation metricsÂ
- Analyze the performance of CNNs for image classificationÂ
- Evaluate Data AugmentationÂ
- Propose techniques to avoid OverfittingÂ
- Examine different architecturesÂ
- Compile inference methods
Module 18. Object DetectionÂ
- Analyze how object detection networks workÂ
- Examine traditional methodsÂ
- Determine evaluation metricsÂ
- Identify the main datasets used in the marketplaceÂ
- Propose architectures of the Two Stage Object Detector typeÂ
- Analyze Fine Tuning MethodsÂ
- Examine different Single Shoot architecturesÂ
- Establish object tracking algorithmsÂ
- Apply detection and tracking of peopleÂ
Module 19. Image Segmentation with Deep LearningÂ
- Analyze how semantic segmentation networks workÂ
- Evaluate traditional methodsÂ
- Examine evaluation metrics and different architecturesÂ
- Examine video domains and cloud pointsÂ
- Apply theoretical concepts through various examplesÂ
Module 20. Advanced Image Segmentation and Advanced Computer Vision TechniquesÂ
- Generate specialized knowledge on the handling of toolsÂ
- Examine Semantic Segmentation in medicineÂ
- Identify the structure of a segmentation projectÂ
- Analyze AutoencodersÂ
- Develop Adversarial Generative NetworksÂ
Design and develop advanced robotic systems that are efficient and collaborative, improving human-robot interaction and ensuring safety in diverse environments"
Advanced Master’s Degree in Robotics and Artificial Vision
Robotics and artificial vision are two disciplines that have revolutionized the way we interact with technology and have transformed industry in various sectors. At TECH Global University, in collaboration with the School of Engineering, we have developed a postgraduate Advanced Master's Degree in Robotics and Artificial Vision to provide professionals with specialized virtual training in these areas of high demand in today's technology market. Thanks to an innovative methodology that mixes virtual classes and the Relearning method, you will be able to acquire solid competencies in an immersive and flexible environment that easily adapts to your routine
In this online postgraduate course, participants will acquire advanced knowledge in robotics and machine vision, from theoretical fundamentals to practical applications in the design and development of intelligent robotic systems. Our interdisciplinary approach enables participants to understand the key concepts of robotics and machine vision, as well as to apply advanced techniques and tools in solving real-world problems in different contexts. In addition, they will be guided by a specialized faculty with wide experience in the research and application of robotics and machine vision in industry and academia.