Litcius/Paper detail

Real-Time Object Tracking via Meta-Learning: Efficient Model Adaptation and One-Shot Channel Pruning

Ilchae Jung, Kihyun You, Hyeonwoo Noh, Minsu Cho, Bohyung Han

2020Proceedings of the AAAI Conference on Artificial Intelligence33 citationsDOIOpen Access PDF

Abstract

We propose a novel meta-learning framework for real-time object tracking with efficient model adaptation and channel pruning. Given an object tracker, our framework learns to fine-tune its model parameters in only a few gradient-descent iterations during tracking while pruning its network channels using the target ground-truth at the first frame. Such a learning problem is formulated as a meta-learning task, where a meta-tracker is trained by updating its meta-parameters for initial weights, learning rates, and pruning masks through carefully designed tracking simulations. The integrated meta-tracker greatly improves tracking performance by accelerating the convergence of online learning and reducing the cost of feature computation. Experimental evaluation on the standard datasets demonstrates its outstanding accuracy and speed compared to the state-of-the-art methods.

Topics & Concepts

PruningComputer scienceMeta learning (computer science)Artificial intelligenceVideo trackingTracking (education)Frame (networking)Channel (broadcasting)Object (grammar)Feature (linguistics)Machine learningGradient descentComputer visionFrame rateTask (project management)Artificial neural networkEngineeringLinguisticsComputer networkSystems engineeringPhilosophyPedagogyAgronomyTelecommunicationsBiologyPsychologyVideo Surveillance and Tracking MethodsAir Quality Monitoring and ForecastingAdvanced Chemical Sensor Technologies