This paper presents an adaptive discriminative generative model that generalizes the conventional Fisher Linear Discriminant algorithm and renders a proper probabilistic interpretation. Within the context of object tracking, we aim to find a discriminative generative model that best separates the target from the background. We present a computationally efficient algorithm to constantly update this discriminative model as time progresses. While most tracking algorithms operate on the premise that the object appearance or ambient lighting condition does not significantly change as time progresses, our method adapts a discriminative generative model to reflect appearance variation of the target and background, thereby facilitating the tracking...
The objective of visual object tracking is to find the location, orientation and scale (size) of an ...
Here we explore a discriminative learning method on underlying generative models for the purpose of ...
Many approaches to object recognition are founded on probability theory, and can be broadly characte...
Abstract. Visual tracking is a challenging problem, as an object may change its appearance due to vi...
Object tracking is a challenging task in many computer vision applications due to occlusion, scale v...
[[abstract]]We propose a color-based tracking framework that infers alternately an object's configur...
Abstract. Visual tracking, in essence, deals with non-stationary data streams that change over time....
We propose a novel method for tracking objects in a video scene that undergo dras-tic changes in the...
The distinguishment between the object appearance and the background is the useful cues available fo...
This paper addresses the problem of multi-target tracking in crowded scenes from a single camera. We...
Abstract. A fundamental problem of object tracking is to adapt to un-seen views of the object while ...
Many approaches to object recognition are founded on probability theory, and can be broadly characte...
Most existing tracking algorithms construct a representation of a target object prior to the trackin...
Partial occlusion is a challenging problem in object tracking. In online visual tracking, it is the ...
Abstract Visual tracking is an important role in computer vision tasks. The robustness of tracking a...
The objective of visual object tracking is to find the location, orientation and scale (size) of an ...
Here we explore a discriminative learning method on underlying generative models for the purpose of ...
Many approaches to object recognition are founded on probability theory, and can be broadly characte...
Abstract. Visual tracking is a challenging problem, as an object may change its appearance due to vi...
Object tracking is a challenging task in many computer vision applications due to occlusion, scale v...
[[abstract]]We propose a color-based tracking framework that infers alternately an object's configur...
Abstract. Visual tracking, in essence, deals with non-stationary data streams that change over time....
We propose a novel method for tracking objects in a video scene that undergo dras-tic changes in the...
The distinguishment between the object appearance and the background is the useful cues available fo...
This paper addresses the problem of multi-target tracking in crowded scenes from a single camera. We...
Abstract. A fundamental problem of object tracking is to adapt to un-seen views of the object while ...
Many approaches to object recognition are founded on probability theory, and can be broadly characte...
Most existing tracking algorithms construct a representation of a target object prior to the trackin...
Partial occlusion is a challenging problem in object tracking. In online visual tracking, it is the ...
Abstract Visual tracking is an important role in computer vision tasks. The robustness of tracking a...
The objective of visual object tracking is to find the location, orientation and scale (size) of an ...
Here we explore a discriminative learning method on underlying generative models for the purpose of ...
Many approaches to object recognition are founded on probability theory, and can be broadly characte...