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1
- Intro
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- Sponsor: Assembly AI Link below
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- Paper Overview
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- Where do traditional classifiers fail?
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- How object detectors work
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- What are virtual outliers and how are they created?
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- Is this really an appropriate model for outliers?
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- How virtual outliers are used during training
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- Plugging it all together to detect outliers
Description:
Explore a comprehensive video explanation of the paper "VOS: Learning What You Don't Know by Virtual Outlier Synthesis." Delve into the challenges of out-of-distribution detection in neural networks and discover how the VOS framework addresses these issues through adaptive synthesis of virtual outliers. Learn about the novel unknown-aware training objective that shapes the uncertainty space between in-distribution data and synthesized outlier data. Gain insights into the application of VOS in object detection and image classification models, and understand how it achieves state-of-the-art performance in improving out-of-distribution detection.

Learning What You Don't Know by Virtual Outlier Synthesis - Paper Explained

Yannic Kilcher
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