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COMP52715: Deep Learning for Computer Vision and Robotics

It is possible that changes to modules or programmes might need to be made during the academic year, in response to the impact of Covid-19 and/or any further changes in public health advice.

Type Tied
Level 5
Credits 15
Availability Available in 2024/2025
Module Cap None.
Location Durham
Department Computer Science

Prerequisites

  • None

Corequisites

  • COMP52815 Robotics - Planning and Motion; COMP52615 Computer Vision; PHYS51915 Introduction to Machine Learning and Statistics; PHYS52015 Introduction to Scientific and High Performance Computing

Excluded Combinations of Modules

  • None

Aims

  • Develop knowledge of key concepts, approaches and algorithms for the use of recent advances in deep machine learning applied to tasks within the context of computer vision and robotics.
  • Develop critical understanding and appreciation of current theoretical and empirical research in the use of deep machine learning approaches within the context of computer vision and robotics and its application within industry.

Content

  • Themes will be chosen from contemporary areas of deep machine learning applied to tasks within the context of computer vision and robotics including the following:
  • scene reconstruction and understanding from multiple images or video;
  • scene reconstruction and understanding from active sensing;
  • Simultaneous Localisation and Mapping (SLAM) from varying sensor inputs;
  • visual odometry from varying sensor inputs;
  • robotic guidance and control;
  • contemporary and emerging research and applications.

Learning Outcomes

Subject-specific Knowledge:

  • By the end of the module students should have:
  • developed a critical understanding of the contemporary deep machine learning topics presented, how these are applicable to relevant industrial problems and have future potential for emerging needs in both a research and industrial setting;
  • developed an advanced knowledge of the principles and practice of analysing relevant robotics and computer vision deep machine learning based algorithms for problem suitability;
  • developed a good understanding of managing the trade-off between task performance and processing requirements within the context of robotics and computer vision systems;
  • explored the most recent advancements in the relevant academic literature and developed a critical understanding of their implications for current industry practice.

Subject-specific Skills:

  • By the end of the module, students should have developed highly specialised and advanced technical, professional and academic skills that enable them to:
  • formulate and solve problems that involve the use of contemporary deep machine learning approaches within the context of robotics and computer vision tasks using a range of algorithmic approaches;
  • develop software solutions that make use of contemporary deep machine learning approaches to address both industrial and research application tasks within the context of robotics and computer vision.

Key Skills:

  • Written communication;
  • Planning, organising and time management;
  • Problem solving and analysis;
  • Using initiative
  • Adaptability
  • Numeracy
  • Computer literacy

Modes of Teaching, Learning and Assessment and how these contribute to the learning outcomes of the module

  • A combination of lectures, seminars, and guided reading will contribute to achieving the aims and learning outcomes of this module.
  • The summative written assignment will test students' knowledge and critical understanding of the material covered in the module, their analytical and problem-solving skills.

Teaching Methods and Learning Hours

ActivityNumberFrequencyDurationTotalMonitored
Lectures82 per week2 hours16 
Seminars82 per week2 hours16 
Preparation and Reading118 
Total150 

Summative Assessment

Component: CourseworkComponent Weighting: 100%
ElementLength / DurationElement WeightingResit Opportunity
Coursework 100Yes

Formative Assessment

Feedback on coursework.

More information

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