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Robust Pan/Tilt Compensation for Foreground-Background Segmentation.

Gianni AlleboschDavid Van HammePeter VeelaertWilfried Philips
Published in: Sensors (Basel, Switzerland) (2019)
In this paper, we describe a robust method for compensating the panning and tilting motion of a camera, applied to foreground-background segmentation. First, the necessary internal camera parameters are determined through feature-point extraction and tracking. From these parameters, two motion models for points in the image plane are established. The first model assumes a fixed tilt angle, whereas the second model allows simultaneous pan and tilt. At runtime, these models are used to compensate for the motion of the camera in the background model. We will show that these methods provide a robust compensation mechanism and improve the foreground masks of an otherwise state-of-the-art unsupervised foreground-background segmentation method. The resulting algorithm is always able to obtain F 1 scores above 80 % on every daytime video in our test set when a minimal number of only eight feature matches are used to determine the background compensation, whereas the standard approaches need significantly more feature matches to produce similar results.
Keyphrases
  • deep learning
  • convolutional neural network
  • machine learning
  • high speed
  • neural network