Improvement of a neural-fuzzy motion detection vision model for complex scenario conditions

M. Murguia, Graciela Ramírez Alonso, Sergio Gonzalez-Duarte
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引用次数: 12

Abstract

Motion detection represents a challenging issue in artificial vision systems. Besides detection of movement in normal scenario conditions robust systems must deal with other non-normal conditions. We propose the improvement of a former neuro-fuzzy motion detection method to face drastic illumination changes, gradual illumination conditions, moving background and scene composition changes. The improvements include adaptive learning rates as well as the inclusion of new fuzzy rules. Experimental findings over several video sequences verify that the improvements outperform the performance of the original method in the non-normal conditions without affecting the performance under normal conditions.
复杂场景条件下神经模糊运动检测视觉模型的改进
运动检测是人工视觉系统中一个具有挑战性的问题。除了在正常情况下检测运动外,鲁棒系统还必须处理其他非正常情况。针对光照剧烈变化、光照条件渐变、背景运动和场景构图变化等问题,提出了一种改进的神经模糊运动检测方法。改进包括自适应学习率以及包含新的模糊规则。在多个视频序列上的实验结果验证了改进后的算法在不影响正常情况下的性能的情况下,在非正常情况下的性能优于原方法。
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