Foveated Manifold Sensing for object recognition

Irina Burciu, T. Martinetz, E. Barth
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引用次数: 1

Abstract

We present a novel method, Foveated Manifold Sensing, for the adaptive and efficient sensing of the visual world. The method is based on algorithms that learn manifolds of increasing but low dimensionality for representative data. As opposed to Manifold Sensing, the new foveated version senses only the most salient areas of a scene. This leads to an efficient sensing strategy that requires only a small number of sensing actions. The method is adaptive because during the sensing process, every new sensing action depends on the previously acquired sensing values. Finally, we propose a hybrid sensing scheme that starts with Manifold Sensing and proceeds with Foveated Manifold Sensing. This sensing scheme needs even less sensing actions for the considered recognition tasks. We apply the proposed algorithms to object recognition on the UMIST and ALOI datasets. We show that, for both databases, we reach a 100% recognition rate with only 10 sensing values.
聚焦流形感知用于目标识别
我们提出了一种新的方法,即注视点流形感知,用于自适应和高效地感知视觉世界。该方法基于对代表性数据进行低维递增流形学习的算法。与歧管传感相反,新的注视点版本只感知场景中最显著的区域。这就产生了一种只需要少量感知动作的高效感知策略。该方法具有自适应性,因为在传感过程中,每一个新的传感动作都依赖于先前获得的传感值。最后,我们提出了一种混合传感方案,从流形传感开始,到注视点流形传感。对于所考虑的识别任务,该感知方案需要更少的感知动作。我们将提出的算法应用于UMIST和ALOI数据集上的目标识别。我们表明,对于这两个数据库,我们达到100%的识别率,只有10个传感值。
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