Litcius/Paper detail

Use Your Head: Improving Long-Tail Video Recognition

Toby Perrett, Saptarshi Sinha, Tilo Burghardt, Majid Mirmehdi, Dima Damen

202318 citationsDOI

Abstract

This paper presents an investigation into long-tail video recognition. We demonstrate that, unlike naturally-collected video datasets and existing long-tail image benchmarks, current video benchmarks fall short on multiple long-tailed properties. Most critically, they lack few-shot classes in their tails. In response, we propose new video benchmarks that better assess long-tail recognition, by sampling subsets from two datasets: SSv2 and VideoLT. We then propose a method, Long-Tail Mixed Reconstruction (LMR), which reduces overfitting to instances from few-shot classes by reconstructing them as weighted combinations of samples from head classes. LMR then employs label mixing to learn robust decision boundaries. It achieves state-of-the-art average class accuracy on EPIC-KITCHENS and the proposed SSv2-LT and VideoLT-LT. Benchmarks and code at: github.com/tobyperrett/lmr

Topics & Concepts

OverfittingComputer scienceShot (pellet)Artificial intelligenceCode (set theory)Class (philosophy)Pattern recognition (psychology)Computer visionSet (abstract data type)Artificial neural networkOrganic chemistryProgramming languageChemistryDomain Adaptation and Few-Shot LearningHuman Pose and Action RecognitionAdvanced Neural Network Applications