National Repository of Grey Literature 2 records found  Search took 0.01 seconds. 
GUI for Active Learning of Image Detection and Classification
Bureš, Tomáš ; Šůstek, Martin (referee) ; Rozman, Jaroslav (advisor)
With active learning, domain expert doesn't need to annotate the whole dataset, but only those which will allow incremental training of a given model. An example of active learning could be detection and removal of wrong annotations. Another example is detection and expansion of training data which model fails to predict. Description of libraries, frameworks and programs which can be used to integrate with active learning is included in this work. The main part of this work is the design and description of a user interface for active learning. The application allows user to browse dataset, sort annotations and images by multiple criteria and modify annotations generated by active learning model. The application's graphical user interface was implemented with the Vue.js framework and Paper.js library. In conclusion, functionality and future application expansion are discussed.
GUI for Active Learning of Image Detection and Classification
Bureš, Tomáš ; Šůstek, Martin (referee) ; Rozman, Jaroslav (advisor)
With active learning, domain expert doesn't need to annotate the whole dataset, but only those which will allow incremental training of a given model. An example of active learning could be detection and removal of wrong annotations. Another example is detection and expansion of training data which model fails to predict. Description of libraries, frameworks and programs which can be used to integrate with active learning is included in this work. The main part of this work is the design and description of a user interface for active learning. The application allows user to browse dataset, sort annotations and images by multiple criteria and modify annotations generated by active learning model. The application's graphical user interface was implemented with the Vue.js framework and Paper.js library. In conclusion, functionality and future application expansion are discussed.

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