A learning-based evolution of concept descriptions for an adaptive object recognition

P. Pachowicz
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Abstract

An approach is presented to the invariant recognition of objects under dynamic perceptual conditions. In this approach, images of a sequence are used to adapt object descriptions to perceived online variabilities of object characteristics. This adaptation is made possible by the closed-loop integration of recognition processes of computer vision together with an incremental machine learning process. The experiments presented were run for the texture recognition problem and were limited to a partially supervised evolution of concept descriptions (models) rather than utilizing a fully autonomous model evolution. Obtained results are evaluated using the criteria of system recognition effectiveness and recognition stability.<>
自适应对象识别中基于学习的概念描述进化
提出了一种动态感知条件下物体的不变性识别方法。在这种方法中,使用序列图像来调整对象描述以感知对象特征的在线变化。这种适应是通过将计算机视觉的识别过程与增量机器学习过程的闭环集成而实现的。所提出的实验是针对纹理识别问题运行的,并且仅限于概念描述(模型)的部分监督进化,而不是利用完全自主的模型进化。利用系统识别有效性和识别稳定性的准则对得到的结果进行评价
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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