Visual representation is crucial for visual tracking method׳s performances. Conventionally, visual representations adopted in visual tracking rely on hand-crafted computer vision descriptors. These descriptors were developed generically without considering tracking-specific information. In this paper, we propose to learn complex-valued invariant representations from tracked sequential image patches, via strong temporal slowness constraint and stacked convolutional autoencoders. The deep slow local representations are learned offline on unlabeled data and transferred to the observational model of our proposed tracker. The proposed observational model retains old training samples to alleviate drift, and collect negative samples which are cohe...
Discriminative Correlation Filters (DCF) have demonstrated excellent performance for visual object t...
We address the problem of long-term object tracking, where the object may become occluded or leave-t...
Feature encoding with respect to an over-complete dic-tionary learned by unsupervised methods, follo...
In this paper, we propose to learn temporally invariant features from a large number of image sequen...
We apply salient feature detection and tracking in videos to simulate fixations and smooth pursuit i...
In this paper, we study the challenging problem of tracking the trajectory of a moving object in a v...
Long-term persistent tracking in ever-changing environments is a challenging task, which often requi...
A robust tracking method is proposed for complex visual sequences. Different from time-consuming off...
Deep neural networks, albeit their great success on feature learning in various computer vision task...
Visual Object Tracking is the computer vision problem of estimating a target trajectory in a video g...
Most sparse linear representation-based trackers need to solve a computationally expensive `1-regula...
In this paper, we propose a visual tracker based on a metric-weighted linear representation of appea...
In this paper, we propose an approach to learn hierarchical features for visual object tracking. Fir...
Using some form of dynamical model in a visual tracking system is a well-known method for increasing...
We apply salient feature detection and tracking in videos to simulate fixations and smooth pursuit i...
Discriminative Correlation Filters (DCF) have demonstrated excellent performance for visual object t...
We address the problem of long-term object tracking, where the object may become occluded or leave-t...
Feature encoding with respect to an over-complete dic-tionary learned by unsupervised methods, follo...
In this paper, we propose to learn temporally invariant features from a large number of image sequen...
We apply salient feature detection and tracking in videos to simulate fixations and smooth pursuit i...
In this paper, we study the challenging problem of tracking the trajectory of a moving object in a v...
Long-term persistent tracking in ever-changing environments is a challenging task, which often requi...
A robust tracking method is proposed for complex visual sequences. Different from time-consuming off...
Deep neural networks, albeit their great success on feature learning in various computer vision task...
Visual Object Tracking is the computer vision problem of estimating a target trajectory in a video g...
Most sparse linear representation-based trackers need to solve a computationally expensive `1-regula...
In this paper, we propose a visual tracker based on a metric-weighted linear representation of appea...
In this paper, we propose an approach to learn hierarchical features for visual object tracking. Fir...
Using some form of dynamical model in a visual tracking system is a well-known method for increasing...
We apply salient feature detection and tracking in videos to simulate fixations and smooth pursuit i...
Discriminative Correlation Filters (DCF) have demonstrated excellent performance for visual object t...
We address the problem of long-term object tracking, where the object may become occluded or leave-t...
Feature encoding with respect to an over-complete dic-tionary learned by unsupervised methods, follo...