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Adaptive Subspace Based Online PCA Algorithm for Mobile Robot Scene Learning and Recognition

机译:基于自适应子空间的在线PCA算法用于移动机器人场景学习与识别。

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The learning method for visual scene recognition that compute a space of eigenvectors by Principal Component Analysis(PCA) traditionally require a batch computation step, in which the only way to update the subspace is to rebuild the subspace by the scratch when it comes to new samples. In this paper, we introduce a new approach to scene recognition based on online PCA algorithm with adaptive subspace, which allows for complete incremental learning. We propose to use different subspace updating strategy for new sample according to the degree of difference between new sample and learned sample, which can improve the adaptability in different situations, and also reduce the time of calculation and storage space. The experimental results show that the proposed method can recognize the unknown scene, realizing online scene accumulation and updating, and improving the recognition performance of system.
机译:传统上,通过主成分分析(PCA)计算特征向量空间的视觉场景识别学习方法需要批量计算步骤,其中更新子空间的唯一方法是在涉及新样本时通过从头开始重建子空间。 。在本文中,我们介绍了一种基于在线PCA算法和自适应子空间的场景识别新方法,该方法可实现完整的增量学习。我们建议根据新样本与学习样本之间的差异程度,对新样本采用不同的子空间更新策略,以提高在不同情况下的适应性,并减少计算和存储时间。实验结果表明,该方法能够识别未知场景,实现在线场景的积累和更新,提高了系统的识别性能。

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