PWP3D: Real-Time Segmentation and Tracking of 3D Objects |
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Authors: | Victor A. Prisacariu Ian D. Reid |
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Affiliation: | 1.Department of Engineering Science,University of Oxford,Oxford,UK |
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Abstract: | We formulate a probabilistic framework for simultaneous region-based 2D segmentation and 2D to 3D pose tracking, using a known
3D model. Given such a model, we aim to maximise the discrimination between statistical foreground and background appearance
models, via direct optimisation of the 3D pose parameters. The foreground region is delineated by the zero-level-set of a
signed distance embedding function, and we define an energy over this region and its immediate background surroundings based
on pixel-wise posterior membership probabilities (as opposed to likelihoods). We derive the differentials of this energy with
respect to the pose parameters of the 3D object, meaning we can conduct a search for the correct pose using standard gradient-based
non-linear minimisation techniques. We propose novel enhancements at the pixel level based on temporal consistency and improved
online appearance model adaptation. Furthermore, straightforward extensions of our method lead to multi-camera and multi-object
tracking as part of the same framework. The parallel nature of much of the processing in our algorithm means it is amenable
to GPU acceleration, and we give details of our real-time implementation, which we use to generate experimental results on
both real and artificial video sequences, with a number of 3D models. These experiments demonstrate the benefit of using pixel-wise
posteriors rather than likelihoods, and showcase the qualities, such as robustness to occlusions and motion blur (and also
some failure modes), of our tracker. |
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