ETISEO Project Corpus data - Video sequences contents - Silogic provider.

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ETISEO Project Corpus data - Video sequences contents - Silogic provider

V1) Acquisition V1.1) Camera configuration: V1.2) Camera type: V1.3) Compression ratio: V1.4) Camera motion: V1.5) Camera position: V1.6) Camera frame rate: V1.7) Image resolution: mono or multi cameras, CCD color JPEG Q10 static top view, far view, 12.5 frame per second, 720 x 576 pixels

V2) Scene information V2.1) Classes of physical objects of interest: V2.2) Scene type: V2.3) Scene location: V2.4) Weather conditions: V2.5) Clutter: V2.6) Illumination conditions: V2.7) Illumination strength: people and/or vehicles, outdoor tarmac of airport all (outside conditions) empty scenes up to some contextual objects, natural light all (outside conditions),

V3) Technical issues V3.1) Illumination changes: V3.2) Reflections: V3.3) Shadows: V3.4) Moving Contextual objects: V3.5) Static occlusion: V3.6) Dynamic occlusion: V3.7) Crossings of physical objects: V3.8) Distance between the camera and physical objects of interest: V3.9) Speed of physical objects of interest: V3.10) Posture/orientation of physical objects of interest: V3.11) Calibration issues: all (outside conditions) in pools of standing water all (outside conditions) none yes far, stopped, slow objects, standing, little perspective distortion,

V4) Application type V4.1) Primitive events: V4.2) Suspicious behaviour detection: V4.3) Intrusion detection: V4.4) Monitoring: V4.5) Statistical estimation: enter/exit zone, change zone, walking, running, following someone, getting close, ( experimental conditions) person in a sterile perimeter zone, car in no parking zones, process surveillance, operations schedule supervision people counting, car speed estimation,

video example 1 Outdoor, peoples, multi cameras, with 3D ground truth Silogic / Avitrack sequences

video example 2 Outdoor, people and vehicles, multi cameras, with shadows and occlusions Silogic / Avitrack sequences

video example 3 Outdoor, vehicles crossings / night coditions Silogic / Avitrack sequences