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How Can Selection of Biologically Inspired Features Improve the Performance of a Robust Object Recognition Model?

机译:生物可以选择如何启发功能提高了健壮的对象识别模型的性能?

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摘要

Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding ability has motivated many computational object recognition models. Most of these models try to emulate the behavior of this remarkable system. The human visual system hierarchically recognizes objects in several processing stages. Along these stages a set of features with increasing complexity is extracted by different parts of visual system. Elementary features like bars and edges are processed in earlier levels of visual pathway and as far as one goes upper in this pathway more complex features will be spotted. It is an important interrogation in the field of visual processing to see which features of an object are selected and represented by the visual cortex. To address this issue, we extended a hierarchical model, which is motivated by biology, for different object recognition tasks. In this model, a set of object parts, named patches, extracted in the intermediate stages. These object parts are used for training procedure in the model and have an important role in object recognition. These patches are selected indiscriminately from different positions of an image and this can lead to the extraction of non-discriminating patches which eventually may reduce the performance. In the proposed model we used an evolutionary algorithm approach to select a set of informative patches. Our reported results indicate that these patches are more informative than usual random patches. We demonstrate the strength of the proposed model on a range of object recognition tasks. The proposed model outperforms the original model in diverse object recognition tasks. It can be seen from the experiments that selected features are generally particular parts of target images. Our results suggest that selected features which are parts of target objects provide an efficient set for robust object recognition.
机译:人类可以有效地迅速识别复杂的自然场景中的物体。这种出色的能力具有许多计算对象识别模型。大多数这些模型都试图模拟这个非凡系统的行为。人类视觉系统在几个处理阶段中分级识别对象。沿着这些阶段,通过视觉系统的不同部分提取具有越来越复杂的复杂性的一组特征。基本特征如条形和边缘在早期的视觉途径中处理,并且只要一个途径中的上部就会更复杂的特征。它是视野处理领域的重要询问,以查看对象的哪个功能被视觉皮质选择并表示。为了解决这个问题,我们扩展了一个由生物学激励的分层模型,用于不同的对象识别任务。在此模型中,在中间阶段中提取的一组对象部分命名补丁。这些对象部分用于模型中的培训过程,在对象识别中具有重要作用。这些贴片从图像的不同位置不分布地选择,这可以导致提取非辨别贴片,最终可能降低性能。在所提出的模型中,我们使用了一种进化算法方法来选择一组信息补丁。我们据报道的结果表明,这些补丁比通常的随机补丁更具信息丰富。我们展示了在一系列物体识别任务范围内提出模型的强度。所提出的模型在不同的物体识别任务中优于原始模型。从实验可以看出,所选特征通常是目标图像的特定部分。我们的结果表明,作为目标对象的一部分的选定功能为强大的对象识别提供了有效的设置。

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