Check out a tool called sloth: https://github.com/cvhciKIT/sloth, which is an open-source tool written in Python with PyQt for creating ground truth computer vision datasets for a wide array of applications, such as semantically creating data like you have above.
If you don't like sloth, you can use any image editing software, like GIMP where you would make one layer per label and use polygons and flood fill of different hues to create your data. You would then merge all of the layers together to make a final image that you would use for your purposes.
However, as user Miki mentioned (see discussion thread below), creating new datasets from the beginning will take a considerable amount of effort. It is highly advisable that you don't create this on your own as you need a lot of data to ensure your algorithms are performing correctly. You'll need the help of other (hopefully willing) PhD students, preferably those you know personally or work with you in your lab or workplace to help manually curate this data for you.
If this isn't an option, you can use crowd sourced funded places like Amazon Mechanical Turk where you can outsource the work to willing individuals where you inform them of the task at hand and you pay a small amount per image. This would be something to consider if you can't find many people to help you.
All in all, this will take a considerable amount of effort, not only in terms of time but in terms of people if you want to create a large data set within a short span of time. I would recommend you simply use established datasets, such as what you have referenced from Cambridge, or Miki suggested LabelMe by Antonio Torralba which not only is a toolbox for annotating images from his LabelMe dataset but it also allows you to do the same for your own images.