Visual tracking task is divided into classification and regression tasks, and manifold features are introduced to improve the performance of the tracker. Although the previous anchor-based tracker has achieved superior tracking performance, the anchor-based tracker not only needs to set parameters manually but also ignores the influence of the geometric characteristics of the object on the tracker performance. In this paper, we propose a novel Siamese network framework with ResNet50 as the backbone, which is an anchor-free tracker based on manifold features. The network design is simple and easy to understand, which not only considers the influence of geometric features on the target tracking performance but also reduces the calculation of ...
Visual object tracking has been widely addressed in Siamese networks, where accurate and fast object...
Accurate and robust visual object tracking is one of the most challenging and fundamental computer v...
Visual tracking problem demands to efficiently perform robust classification and accurate target sta...
Recently, Siamese architecture has been widely used in the field of visual tracking, and has achieve...
Siamese networks have recently attracted significant attention in the visual tracking community due ...
Abstract Convolutional neural networks are potent models that yield hierarchies of features and hav...
Siamese networks have been extensively studied in recent years. Most of the previous research focuse...
As a prevailing solution for visual tracking, Siamese networks manifest high performance via convolu...
Target tracking algorithms based on deep learning have achieved good results in public datasets. Amo...
Existing Siamese-based tracking algorithms usually utilize local features to represent the object, w...
A reliable tracker has the ability to adapt to change of objects over time, and is robust and accura...
The Siamese-based object tracking algorithm regards tracking as a similarity matching problem. It de...
Object tracking belongs to active research areas in computer vision. We are interested in matching-b...
Siamese network based trackers regard visual tracking as a similarity matching task between the targ...
Object tracking based on Siamese networks has achieved great success in recent years, but increasing...
Visual object tracking has been widely addressed in Siamese networks, where accurate and fast object...
Accurate and robust visual object tracking is one of the most challenging and fundamental computer v...
Visual tracking problem demands to efficiently perform robust classification and accurate target sta...
Recently, Siamese architecture has been widely used in the field of visual tracking, and has achieve...
Siamese networks have recently attracted significant attention in the visual tracking community due ...
Abstract Convolutional neural networks are potent models that yield hierarchies of features and hav...
Siamese networks have been extensively studied in recent years. Most of the previous research focuse...
As a prevailing solution for visual tracking, Siamese networks manifest high performance via convolu...
Target tracking algorithms based on deep learning have achieved good results in public datasets. Amo...
Existing Siamese-based tracking algorithms usually utilize local features to represent the object, w...
A reliable tracker has the ability to adapt to change of objects over time, and is robust and accura...
The Siamese-based object tracking algorithm regards tracking as a similarity matching problem. It de...
Object tracking belongs to active research areas in computer vision. We are interested in matching-b...
Siamese network based trackers regard visual tracking as a similarity matching task between the targ...
Object tracking based on Siamese networks has achieved great success in recent years, but increasing...
Visual object tracking has been widely addressed in Siamese networks, where accurate and fast object...
Accurate and robust visual object tracking is one of the most challenging and fundamental computer v...
Visual tracking problem demands to efficiently perform robust classification and accurate target sta...