Giuseppe Pastore
On the importance of Pseudo-Labeling for Generalized Zero-Shot Semantic Segmentation.
Rel. Barbara Caputo, Matteo Matteucci, Massimiliano Mancini, Fabio Cermelli. Politecnico di Torino, Master of science program in Computer Engineering, 2020
Abstract
Deep convolutional neural networks are one of the most powerful algorithms for understanding image content. Among their achievements, these networks have shown to be very effective in addressing the semantic segmentation problem, the goal of which is to assign the correct semantic label to each pixel in the image. However, having a full pixel-wise annotation to train these models in a supervised way is unlikely in the reality, both because of the burden of the pixel-wise annotation process and the high variety of existing concepts that cannot be captured by a single training set. To sidestep these issues, researchers have explored the Generalized Zero-Shot Learning (GZSL) scenario, that is building models able to assign pixels to both training classes (seen) and classes with no labeled pixels available at training time (unseen), using side-information capturing seen and unseen classes relationships in a given semantic space.
Previous works address the task as a visual to semantic embedding problem by learning how to map pixels of seen classes to the semantic space
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