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Visual attention and novelty detection: experiments with automatic scale selection

Ulrich Nehmzow, Hugo Vieira Neto

Year
2006
Citations
5

Abstract

We present experiments with an autonomous inspection robot, whose task was to highlight novel features in its environment using camera images. Experiments were conducted with two different attention mechanisms — saliency map and multiscale Harris detector — and two different novelty detection mechanisms — the Grow-When-Required neural network and incremental PCA. For both mechanisms we compared fixed-scale image encoding with automatically scaled image patches. Results show that using automatic scale selection provides a more efficient representation of the visual input space, but that performance is generally better using a fixed-scale image encoding. 1.

Keywords

Artificial intelligenceNoveltyComputer scienceEncoding (memory)Computer visionScale (ratio)Novelty detectionPattern recognition (psychology)Selection (genetic algorithm)Image (mathematics)

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