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From Human Eye Fixation to Human-like Autonomous Artificial Vision

机译:从人眼固视到类人自治视觉

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Fitting the skills of the natural vision is an appealing perspective for artificial vision systems, especially in robotics applications where visual perception of the surrounding environment is a key requirement. Focusing on the visual attention dilemma for autonomous visual perception, in this work we propose a model for artificial visual attention combining a statistical foundation of visual saliency and a genetic optimization. The computational issue of our model relies on center-surround statistical features calculations and a nonlinear fusion of different resulting maps. Statistical foundation and bottom-up nature of the proposed model provide as well the advantage to make it usable without needing prior information as a comprehensive solid theoretical basement. The eye-fixation paradigm has been considered as evaluation benchmark providing MIT1003 and Toronto image datasets for experimental validation. The reported experimental results show scores challenging currently best algorithms used in the aforementioned field with faster execution speed of our approach.
机译:适合自然视觉的技能是人工视觉系统的一个吸引人的观点,特别是在机器人应用中,对周围环境的视觉感知是关键要求。着眼于自主视觉感知的视觉注意困境,在这项工作中,我们提出了一种结合了视觉显着性和遗传优化的统计学基础的人工视觉注意模型。我们模型的计算问题依赖于中心周围统计特征的计算以及不同结果图的非线性融合。所提出的模型的统计基础和自下而上的性质还提供了使其可以使用而无需先验信息作为全面坚实的理论基础的优点。注视范例已被视为提供MIT1003和Toronto图像数据集进行实验验证的评估基准。报告的实验结果表明,以上述方法的更快执行速度,分数挑战了当前在上述领域中使用的最佳算法。

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