Title of article :
Feature-Based Sequence-to-Sequence Matching
Author/Authors :
YARON CASPI، نويسنده , , DENIS SIMAKOV AND MICHAL IRANI، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
This paper studies the problem of matching two unsynchronized video sequences of the same dynamic
scene, recorded by different stationary uncalibrated video cameras. The matching is done both in time and in space,
where the spatial matching can be modeled by a homography (for 2D scenarios) or by a fundamental matrix (for 3D
scenarios). Our approach is based on matching space-time trajectories of moving objects, in contrast to matching
interest points (e.g., corners), as done in regular feature-based image-to-image matching techniques. The sequences
are matched in space and time by enforcing consistent matching of all points along corresponding space-time
trajectories.
By exploiting the dynamic properties of these space-time trajectories, we obtain sub-frame temporal correspondence
(synchronization) between the two video sequences. Furthermore, using trajectories rather than feature-points
significantly reduces the combinatorial complexity of the spatial point-matching problem when the search space is
large. This benefit allows for matching information across sensors in situations which are extremely difficult when
only image-to-image matching is used, including: (a) matching under large scale (zoom) differences, (b) very wide
base-line matching, and (c) matching across different sensing modalities (e.g., IR and visible-light cameras). We
show examples of recovering homographies and fundamental matrices under such conditions.
Keywords :
sequence-to-sequence matching , alignment in space and time , dynamic information , multi-sensoralignment , trajectory matching , wide base-line matching
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION