Litcius/Paper detail

Correlation Filters Based on Strong Spatio-Temporal for Robust RGB-T Tracking

Futing Luo, Mingliang Zhou, Bing Fang

2021Journal of Circuits Systems and Computers10 citationsDOI

Abstract

In this paper, we propose a strong spatio-temporal mechanism with correlation filters to solve multi-modality tracking tasks. First, we use the features of the previous four frames as spatio-temporal features, then aggregate the spatio-temporal features into the filters learning and positioning of the adjacent frame. Second, we enhance the temporal and spatial characteristics of the current frame filter by learning the previous four frame filters and spatial penalty. From the experimental results on the GTOT, VOT-TIR2019 and RGBT234 datasets, our strong spatio-temporal correlation filters has achieved excellent performance.

Topics & Concepts

Frame (networking)Computer scienceArtificial intelligenceFilter (signal processing)Computer visionRGB color modelCorrelationTracking (education)Inter frameSpatial correlationAggregate (composite)Pattern recognition (psychology)MathematicsReference frameTelecommunicationsPsychologyPedagogyMaterials scienceGeometryComposite materialVideo Surveillance and Tracking MethodsAdvanced Vision and ImagingImage Enhancement Techniques
Correlation Filters Based on Strong Spatio-Temporal for Robust RGB-T Tracking | Litcius