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A saliency-based bottom-up visual attention model for dynamic scenes analysis

机译:基于显着性的自下而上的视觉注意模型,用于动态场景分析

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摘要

This work proposes a model of visual bottom-up attention for dynamic scene analysis. Our work adds motion saliency calculations to a neural network model with realistic temporal dynamics [(e.g., building motion salience on top of De Brecht and Saiki Neural Networks 19:1467-1474, (2006)]. The resulting network elicits strong transient responses to moving objects and reaches stability within a biologically plausible time interval. The responses are statistically different comparing between earlier and later motion neural activity; and between moving and non-moving objects. We demonstrate the network on a number of synthetic and real dynamical movie examples. We show that the model captures the motion saliency asymmetry phenomenon. In addition, the motion salience computation enables sudden-onset moving objects that are less salient in the static scene to rise above others. Finally, we include strong consideration for the neural latencies, the Lyapunov stability, and the neural properties being reproduced by the model.
机译:这项工作为动态场景分析提出了一种自下而上的视觉注意模型。我们的工作将运动显着性计算添加到具有逼真的时间动力学的神经网络模型中(例如,在De Brecht和Saiki Neural Networks 19:1467-1474,(2006)之上构建运动显着性。在一个生物学上合理的时间间隔内,运动物体达到稳定状态;在较早和较晚的运动神经活动之间;以及在运动物体与不运动物体之间的响应在统计上是不同的;我们在许多合成的和真实的动态电影示例中演示了该网络。我们展示了该模型捕获了运动显着性不对称现象,此外,运动显着性计算使在静态场景中不显着的突然发作的运动对象能够上升到其他位置,最后,我们对神经潜伏期, Lyapunov稳定性,以及模型再现的神经属性。

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