Pixel-by-Pixel Cross-Domain Alignment for Few-Shot Semantic Segmentation
- URL: http://arxiv.org/abs/2110.11650v1
- Date: Fri, 22 Oct 2021 08:27:17 GMT
- Title: Pixel-by-Pixel Cross-Domain Alignment for Few-Shot Semantic Segmentation
- Authors: Antonio Tavera, Fabio Cermelli, Carlo Masone, Barbara Caputo
- Abstract summary: We consider the task of semantic segmentation in autonomous driving applications.
In this context, aligning the domains is made more challenging by the pixel-wise class imbalance.
We propose a novel framework called Pixel-By-Pixel Cross-Domain Alignment (PixDA)
- Score: 16.950853152484203
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper we consider the task of semantic segmentation in autonomous
driving applications. Specifically, we consider the cross-domain few-shot
setting where training can use only few real-world annotated images and many
annotated synthetic images. In this context, aligning the domains is made more
challenging by the pixel-wise class imbalance that is intrinsic in the
segmentation and that leads to ignoring the underrepresented classes and
overfitting the well represented ones. We address this problem with a novel
framework called Pixel-By-Pixel Cross-Domain Alignment (PixDA). We propose a
novel pixel-by-pixel domain adversarial loss following three criteria: (i)
align the source and the target domain for each pixel, (ii) avoid negative
transfer on the correctly represented pixels, and (iii) regularize the training
of infrequent classes to avoid overfitting. The pixel-wise adversarial training
is assisted by a novel sample selection procedure, that handles the imbalance
between source and target data, and a knowledge distillation strategy, that
avoids overfitting towards the few target images. We demonstrate on standard
synthetic-to-real benchmarks that PixDA outperforms previous state-of-the-art
methods in (1-5)-shot settings.
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