CVDec 11, 2014

An active search strategy for efficient object class detection

arXiv:1412.3709v230 citations
Originality Highly original
AI Analysis

This work addresses the computational bottleneck in object detection for computer vision applications, offering a more efficient approach without sacrificing performance.

The paper tackles the inefficiency of evaluating all windows in object detection by proposing an active search strategy that selects windows sequentially based on context and classifier scores, reducing the number of classifier evaluations by 9x while maintaining detection accuracy on the SUN2012 dataset.

Object class detectors typically apply a window classifier to all the windows in a large set, either in a sliding window manner or using object proposals. In this paper, we develop an active search strategy that sequentially chooses the next window to evaluate based on all the information gathered before. This results in a substantial reduction in the number of classifier evaluations and in a more elegant approach in general. Our search strategy is guided by two forces. First, we exploit context as the statistical relation between the appearance of a window and its location relative to the object, as observed in the training set. This enables to jump across distant regions in the image (e.g. observing a sky region suggests that cars might be far below) and is done efficiently in a Random Forest framework. Second, we exploit the score of the classifier to attract the search to promising areas surrounding a highly scored window, and to keep away from areas near low scored ones. Our search strategy can be applied on top of any classifier as it treats it as a black-box. In experiments with R-CNN on the challenging SUN2012 dataset, our method matches the detection accuracy of evaluating all windows independently, while evaluating 9x fewer windows.

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