From Virtual to Real World Visual Perception using Domain Adaptation -- The DPM as Example
Antonio M. Lopez, Jiaolong Xu, Jose L. Gomez, David Vazquez, German, Ros

TL;DR
This paper explores domain adaptation from virtual to real-world data for vehicle detection, highlighting the impact of domain gap, object appearance, and photo-realism on classifier performance.
Contribution
It revisits domain adaptation of a deformable part-based model using virtual data, addressing challenges in virtual-to-real-world visual perception tasks.
Findings
Domain gap varies with object appearance differences
Photo-realism influences domain adaptation effectiveness
Virtual data can effectively train real-world classifiers
Abstract
Supervised learning tends to produce more accurate classifiers than unsupervised learning in general. This implies that training data is preferred with annotations. When addressing visual perception challenges, such as localizing certain object classes within an image, the learning of the involved classifiers turns out to be a practical bottleneck. The reason is that, at least, we have to frame object examples with bounding boxes in thousands of images. A priori, the more complex the model is regarding its number of parameters, the more annotated examples are required. This annotation task is performed by human oracles, which ends up in inaccuracies and errors in the annotations (aka ground truth) since the task is inherently very cumbersome and sometimes ambiguous. As an alternative we have pioneered the use of virtual worlds for collecting such annotations automatically and with high…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · Advanced Neural Network Applications
