Walter Maffione
Addressing Domain Shift between Real and Synthetic Data for Semantic Segmentation using GANs.
Rel. Tatiana Tommasi, Antonio Mastropietro. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Informatica (Computer Engineering), 2020
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Abstract
Autonomous driving is without a shadow of doubt the future of automotive and it currently needs efficient solutions. Deep learning methods have shown excellent results for object classification and detection, but the specific task needed for driving is the more challenging semantic segmentation: each pixel of a depicted scene should be recognized as belonging to a specific object. For this setting, it is crucial to collect a large amount of per-pixel labeled data, which need an expensive manual classification process. Synthetic datasets from simulators can be used in order to reduce the amount of data required and they come with free annotation by design.
However, the big style difference between synthetic and real images does not allow a direct knowledge transfer across the two domains and it asks for specific domain adaptation solutions
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