Adaptive Exploitation of Pre-trained Deep Convolutional Neural Networks for Robust Visual Tracking
Seyed Mojtaba Marvasti-Zadeh, Hossein Ghanei-Yakhdan, and Shohreh, Kasaei

TL;DR
This paper introduces an adaptive method for exploiting pre-trained CNN features in visual tracking, improving robustness by considering scene attributes and model selection.
Contribution
It proposes an adaptive framework that analyzes CNN models to select optimal feature maps and exploits scene attributes for enhanced tracking performance.
Findings
Improved tracking accuracy over state-of-the-art methods.
Effective adaptation to scene attributes like occlusion and deformation.
Validated on multiple datasets and CNN architectures.
Abstract
Due to the automatic feature extraction procedure via multi-layer nonlinear transformations, the deep learning-based visual trackers have recently achieved great success in challenging scenarios for visual tracking purposes. Although many of those trackers utilize the feature maps from pre-trained convolutional neural networks (CNNs), the effects of selecting different models and exploiting various combinations of their feature maps are still not compared completely. To the best of our knowledge, all those methods use a fixed number of convolutional feature maps without considering the scene attributes (e.g., occlusion, deformation, and fast motion) that might occur during tracking. As a pre-requisition, this paper proposes adaptive discriminative correlation filters (DCF) based on the methods that can exploit CNN models with different topologies. First, the paper provides a…
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