This paper presents a new approach to tracking people in crowded scenes, where people are subject to long-term (partial) occlusions and may assume varying postures and articulations. In such videos, detection-based trackers give poor performance since detecting people occurrences is not reliable, and common assumptions about locally smooth trajectories do not hold. Rather, we use temporal mid-level features (e.g., supervoxels or dense point trajectories) as a more coherent spatiotemporal basis for handling occlusion and pose variations.Thus, we formulate tracking as labeling mid-level features by object identifiers, and specify a new approach, called constrained sequential labeling (CSL), for performing this labeling. CSL uses a cost functi...
Thesis (Ph.D.)--Boston UniversityPLEASE NOTE: Boston University Libraries did not receive an Authori...
Efficiency and robustness are the two most important issues for multi-object tracking algorithms in ...
In this paper, we propose a new approach that uses a motion-estimation based framework for video tra...
This paper presents a new approach to tracking people in crowded scenes, where people are subject to...
Recent advances in multiple object tracking (MOT) rely primarily on visual appearance features to re...
This paper presents a solution to the problem of tracking people within crowded scenes. The aim is t...
Tracking multiple targets using fixed cameras with non-overlapping views is a challenging problem. O...
We present an approach to multi-target tracking that has expressive potential beyond the capabilitie...
We derive a probabilistic framework for robust, realtime, visual tracking of multiple previously uns...
Abstract. Occlusion and lack of visibility in dense crowded scenes make it very difficult to track i...
Long term tracking of people in unconstrained scenarios is still an open problem due to the absence ...
This paper presents a novel approach for tracking multiple objects and a statistical learning approa...
This thesis addresses the multi-person tracking task with two types of representation: body pose and...
Occlusion and lack of visibility in dense crowded scenes make it very difficult to track individual ...
The paper suggests a contour-based algorithm for tracking moving objects in video. The inputs are ...
Thesis (Ph.D.)--Boston UniversityPLEASE NOTE: Boston University Libraries did not receive an Authori...
Efficiency and robustness are the two most important issues for multi-object tracking algorithms in ...
In this paper, we propose a new approach that uses a motion-estimation based framework for video tra...
This paper presents a new approach to tracking people in crowded scenes, where people are subject to...
Recent advances in multiple object tracking (MOT) rely primarily on visual appearance features to re...
This paper presents a solution to the problem of tracking people within crowded scenes. The aim is t...
Tracking multiple targets using fixed cameras with non-overlapping views is a challenging problem. O...
We present an approach to multi-target tracking that has expressive potential beyond the capabilitie...
We derive a probabilistic framework for robust, realtime, visual tracking of multiple previously uns...
Abstract. Occlusion and lack of visibility in dense crowded scenes make it very difficult to track i...
Long term tracking of people in unconstrained scenarios is still an open problem due to the absence ...
This paper presents a novel approach for tracking multiple objects and a statistical learning approa...
This thesis addresses the multi-person tracking task with two types of representation: body pose and...
Occlusion and lack of visibility in dense crowded scenes make it very difficult to track individual ...
The paper suggests a contour-based algorithm for tracking moving objects in video. The inputs are ...
Thesis (Ph.D.)--Boston UniversityPLEASE NOTE: Boston University Libraries did not receive an Authori...
Efficiency and robustness are the two most important issues for multi-object tracking algorithms in ...
In this paper, we propose a new approach that uses a motion-estimation based framework for video tra...