16 research outputs found
A study on different experimental configurations for age, race, and gender estimation problems
Training method and detection method for object recognition
The present invention relates to the technical field of object recognition. A training method for object recognition from top-view images uses a step of labelling at least one training object from at least one training image using a pre-defined labelling scheme. A detection method for object recognition uses a step of applying a test window on a test image. An object recognition method comprises the training method and the detection method. A surveillance system performs the detection method. The present invention is particularly useful for object recognition in optic-distorted videos based on a machine training method. The invention is further particularly useful for person detection from top-view visible imagery and surveillance and presence monitoring in a region of interest (ROI)
People detection in fish-eye top-views
Is the detection of people in top views any easier than from the much researched canonical fronto-parallel views (e.g. Caltech and INRIA pedestrian datasets)? We show that in both cases people appearance variability and false positives in the background limit performance. Additionally, we demonstrate that the use of fish-eye lenses further complicates the top-view people detection, since the person viewpoint ranges from nearly-frontal, at the periphery of the image, to perfect top-views, in the image center, where only the head and shoulder top profiles are visible. We contribute a new top-view fish-eye benchmark, we experiment with a state-of-the-art person detector (ACF) and evaluate approaches which balance less variability of appearance (grid of classifiers) with the available amount of data for training. Our results indicate the importance of data abundance over the model complexity and additionally stress the importance of an exact geometric understanding of the problem, which we also contribute here
Tracking system, arrangement and method for tracking objects
A tracking system for tracking objects within a field of view is disclosed. The field of view may include a first zone and an adjacent zone of interest where at least two gates are associated with respective sides of the first zone within the field of view. The first camera is configured to detect when an object crosses one of the at least two gates and track the object throughout the first zone and the zone of interest. The tracking system is configured to generate a first event message in response to the object being tracked from one of the gates into the zone of interest and subsequently leaving the first zone through a dedicated gate of the at least two gates
Verfahren zum gemeinsamen Detektieren, Verfolgen und Klassifizieren von Objekten
tracking system for tracking objects within a field of view is proposed. The field of view includes a first zone (A1) and an adjacent zone (A0) of interest, wherein at least two gates (G1, G2) are associated with respective sides of the first zone (A1) within the field of view. The first camera (C1) is adapted to detect when an object crosses one of the at least two gates and track the object throughout the first zone (A1) and the zone (A0) of interest; wherein the tracking system is adapted to generate a first event message (ES1) in response to the object being tracked from one of the gates into the zone (A0) of interest and subsequently leaving the first zone through a dedicated gate (G1) of the at least two gates
Method for common detecting, tracking and classifying of objects
A method for machine-based training of a computer-implemented network for common detecting, tracking, and classifying of at least one object in a video image sequence having a plurality of successive individual images. A combined error may be determined during the training, which error results from the errors of the determining of the class identification vector, determining of the at least one identification vector, the determining of the specific bounding box regression, and the determining of the inter-frame regression
