Somaiya Vidyavihar University
K. J. Somaiya College of Engineering, Mumbai -77
                           (A Constituent College of Somaiya Vidyavihar University)
   Course Code                                             Course Title
   116h59C701                                          Intelligent System
                                          TH                             P                 TUT            Total
      Teaching
                                          03                             0                  --             03
    Scheme(Hrs.)
  Credits Assigned                        03                             0                  --             03
                                                                 Marks
    Examination                      CA
      Scheme                                            ESE        TW        O        P     P&O           Total
                              ISE              IA
                                30             20         50                 --       --         --       100
Course prerequisites:
Computer vision, Artificial Intelligence, Robotics
Course Objectives:
The course aims at developing students to make intelligent systems. Having gained knowledge in
the areas of Artificial Intelligence, Robotics, and Computer vision this course gives combined
exposure of all three on the application level.
Course Outcomes:
At the end of successful completion of the course, the student will be able to
CO1: Understand basic concepts of parallel computing.
CO2: Introduction to Compute Unified Device Architecture
CO3: Integrate AI with Robotics
CO4: Make an intelligent robot with computer vision integrated with it
CO5: Apply concepts of deep learning to real-time images and videos
 Module       Unit                               Details                       Hrs. CO
  No.          No.
   1          Parallel Computing                                                9   CO1
               1.1    Basics of parallel computing for accelerated computer
                      vision, Flynns classical Taxonomy, Parallel Computer
                      Memory Architecture, Parallel Programming Models,
                      Designing Parallel programmes, Distributed Systems.
    2         Accelerated Computer Vision                                       9   CO2
               2.1    Introduction to Compute Unified Device Architecture
                      (CUDA), CUDA architecture and applications, Working with
                      videos in OpenCV.
               2.2    CUDA program structure, Threads, Synchronization,
                      and Memory. Application of Cuda and Open CV.
    3         AI for Robotics                                                                         9     CO3
SVU2020- R1         ETRX_Honours Programme in AI, Computer Vision and Robotics                        Page 15 of 18
                                  Somaiya Vidyavihar University
                         K. J. Somaiya College of Engineering, Mumbai -77
                           (A Constituent College of Somaiya Vidyavihar University)
              3.1    Basic principle and designing process of AI robot,
                     OODA loop, Introduction to different AI-Robotic
                     paradigm, Hierarchical Paradigm,NHC, Reactive
                     Paradigms
SVU2020- R1         ETRX_Honours Programme in AI, Computer Vision and Robotics        Page 16 of 18
                                   Somaiya Vidyavihar University
                          K. J. Somaiya College of Engineering, Mumbai -77
                            (A Constituent College of Somaiya Vidyavihar University)
               3.2    Designing a Reactive Behavioural System with case study,
                      Introduction to AI hardware processors, Advanced
                      robotics applications with AI (Autopilot planes,
                      Autonomous vehicles) Setting Up of AI Robot
   4          Sensing Techniques and Intelligent Robotics with Applications of                9     CO4
              CV
               4.1    Model of sensing, Behavioral Sensors, Fusion
                      Sensors, Suite Proprioceptive Sensors, computer
                      vision sensing
               4.2    introduction to Hybrid Paradigm of Robotic AI
                      Distributed mobile robot systems,
   5          Computer Vision Applications with Deep Learning                                 9     CO5
               5.1    Recognition in Computer Vision, Feature Extraction
                      Feature Selection & Reduction, Convolutional Neural
                      Networks, Derivation of Convolution , Designing a
                      CNN Recognition with artificial neural networks (ANN)
               5.2    Tensor flow recognition, Graph Visualization Using
                      TB, Linear Model, Building FFNN, Recognition of
                      Images with deep learning
                                                                          Total               45
Recommended Books:
Sr. No.       Name/s of Author/s              Title of Book              Name of          Edition and
                                                                      Publisher with        Year of
                                                                          country         Publication
   1      Bhaumik Vaidya                    Hands-On GPU-            Packt Publishing   1 Edition, Year
                                                                                         st
                                            Accelerated              Ltd, USA           2018
                                            Computer Vision
                                            with OpenCV
                                            and CUDA
   2      Francis X. Govers                 Artificial               Packt Publishing   1 Edition, Year
                                                                                         st
                                            Intelligence for         Ltd, USA           2018
                                            Robotics
   3      Robin Murphy                      Introduction to          MIT Press, USA    1 Edition, Year
                                                                                         st
                                            AI Robotics                                2000
   4      Dominik Sankowski,                Computer Vision          World Scientific, 1 Edition, Year
                                                                                         st
          Jacek Nowakowski                  In Robotics And          USA               2014
                                            Industrial
                                            Applications
   5      Ahmed Fawzy Gad                   Practical                Apress             1 Edition, Year
                                                                                         st
                                            Computer Vision          publication USA    2018
                                            Applications
                                            Using        Deep
                                            Learning      with
                                            CNNs
SVU2020- R1          ETRX_Honours Programme in AI, Computer Vision and Robotics                Page 17 of 18
                                     Somaiya Vidyavihar University
                            K. J. Somaiya College of Engineering, Mumbai -77
                             (A Constituent College of Somaiya Vidyavihar University)
     Course Code                                             Course Title
      116h59L701                                 Intelligent System Laboratory
                                           TH                              P                 TUT         Total
        Teaching
                                             0                             02                 --           02
      Scheme(Hrs.)
    Credits Assigned                         0                             01                 --           01
                                                                   Marks
      Examination                     CA
        Scheme                                            ESE        TW         O       P     P&O        Total
                                ISE              IA
                                  -               -          -        50        --      --         --      50
           Term-Work:
   Term work will consist of experiments/ tutorials covering entire syllabus of the course
   ‘116h59C701’ . Students will be graded based on continuous assessment of their term
   work
 Course prerequisites: Linear algebra, Vector Calculus, Basic probability theory, Basic
  Course prerequisites:
 Programming     Skills Linear algebra, Vector Calculus, Basic probability theory, Basic
  Programming Skills
Course Objectives: The course aims to learn the fundamentals of Artificial Intelligence (AI), and
 Course
apply     Objectives:
       them.           The courseagents
              Design intelligent     aims to
                                           to learn
                                                solvethe  fundamentals
                                                       real-world       of Artificial
                                                                   problems,   FocusesIntelligence
                                                                                         on methods (AI),
                                                                                                       for
 and apply  them. Design   intelligent agents  to solve  real-world  problems, Focuses   on  methods
deciding actions to be taken, representation of knowledge about the intelligent agents' environment   for
 deciding
with       actions
     reasoning  and todecision
                        be taken,
                                makingrepresentation
                                         in the presenceof knowledge     about
                                                            of uncertainty      the environment.
                                                                            in the   intelligent agents'
                                                                                                   It also
discusses expert system solving problems efficiently and effectively based on knowledge ofinhuman
 environment   with   reasoning    and  decision   making     in the  presence  of  uncertainty       the
 environment. It also discusses expert system solving problems efficiently and effectively based
experts.
 on knowledge of human experts.
 Course Outcomes
  Course Outcomes
 At the end of successful completion of the course the student will be able to
  At the end of successful completion of the course the student will be able to
CO1: Understand the idea of intelligent agents
 CO1: Understand the idea of intelligent agents
CO2: Apply the search methods in AI.
 CO2:Construct
CO3:  Apply theplans
                search
                     andmethods
                         methodsinfor
                                    AI.generating knowledge
 CO3: Construct plans and methods for generating knowledge
CO4: Understand the reasoning and decision making in an uncertain world.
 CO4: Understand the reasoning and decision making in an uncertain world.
CO5: Understand the concepts of expert systems.
 CO5: Understand the concepts of expert systems.
   SVU2020- R1        ETRX_Honours Programme in AI, Computer Vision and Robotics                        Page 18 of 18