Algorithms
for fully automatic segmentation of images are often not sufficiently generic
with suitable accuracy, and fully manual segmentation is not practical in many
settings. There is a need for semiautomatic algorithms, which are capable of
interacting with the user and taking into account the collected feedback.
Typically, such methods have simply incorporated user feedback directly. Here,
we employ active learning of optimal queries to guide user interaction. Our
work in this paper is based on constrained spectral clustering that iteratively
incorporates user feedback by propagating it through the calculated affinities.
The original framework does not scale well to large data sets, and hence is not
straightforward to apply to interactive image segmentation. In order to address
this issue, we adopt advanced numerical methods for eigen-decomposition
implemented over a subsampling scheme. Our key innovation, however, is an
active learning strategy that chooses pairwise queries to present to the user
in order to increase the rate of learning from the feedback. Performance
evaluation is carried out on the Berkeley segmentation and Graz-02 image data
sets, confirming that convergence to high accuracy levels is realizable in
relatively few iterations.
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