An efficient object recognition based on Gabor transform and LBP variance

Yongxin Chang, Shijie Feng, Jing Zhang
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引用次数: 0

Abstract

Recognizing objects from arbitrary aspects is always a highly challenging problem in applied engineering and computer vision fields. At present, most existing algorithms mainly focus on specific viewpoint detection. Hence, in this paper we propose a novel recognizing model, which combines Gabor transform with LBP variance to handle the problem of different viewpoints and pose changing. Then, the images of inaccurate recognizing are evaluated by learning and fed back the detector to avoid the same mistakes in the future. The principal idea is to extract intrinsic viewpoint invariant features from the unseen poses of object, and then to take advantage of these features to support recognition. Compared with other recognition models, the proposed approach can efficiently tackle the multi-view problem and promote the recognition performance. For a quantitative evaluation, this novel algorithm has been tested on two benchmark datasets such as Caltech 101 and PASCAL VOC 2011datasets. The experimental results validate that our approach can recognize objects more precisely and outperforms others single view recognition methods.
基于Gabor变换和LBP方差的高效目标识别
在应用工程和计算机视觉领域,从任意角度识别物体一直是一个极具挑战性的问题。目前,大多数现有算法主要集中在特定视点检测上。因此,本文提出了一种新的识别模型,将Gabor变换与LBP方差相结合来处理不同视点和姿态变化问题。然后,通过学习对识别不准确的图像进行评估,并反馈给检测器,以避免以后出现同样的错误。其主要思想是从物体不可见的姿态中提取固有的视点不变特征,然后利用这些特征来支持识别。与其他识别模型相比,该方法能有效地解决多视图问题,提高识别性能。为了进行定量评估,该算法已经在两个基准数据集(如Caltech 101和PASCAL VOC 2011数据集)上进行了测试。实验结果表明,该方法可以更精确地识别物体,并且优于其他单视图识别方法。
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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