角作为有趣的点在生物启发的对象识别,HMAX

H. Sufikarimi, K. Mohammadi
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引用次数: 2

摘要

本文提出了一种提高HMAX目标识别精度、鲁棒性和处理时间的新方法。HMAX是一种受生物学启发的分层模型,在物体识别方面具有良好的性能。尽管获得了相对较好的分类率,但其结果并不稳定,并且在每次程序运行期间都会发生变化,这意味着它不是一种可重复的方法。使用随机选择的特征,HMAX具有不恒定的分类率。我们建议改变标准HMAX中的特征选择策略。通过可重复的特征选择,HMAX获得了非常好的可重复性能,与之前的结果相比更加可靠。为了解决HMAX中的不可重复性问题,我们建议选择Harris角点检测提取的角点作为关键点。通过这种交替,我们可以获得更高的分类率和更低的计算时间。该方法在训练图像和提取特征数量较少的情况下表现出优异的性能。在训练阶段,正面类只使用5张图像,负面类只使用5张图像。在加州理工学院的数据集上评估了分类率和耗时。此外,在新方法和标准HMAX特征中都证明了特征数量的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Corners as interesting points in biologically inspired object recognition, HMAX
In this paper a new approach is proposed to improve accuracy, robustness and process time in HMAX for object recognition. The HMAX is a hierarchal biologically inspired model which leads to a good performance in object recognition. Despite achieving a relatively good classification rate, its result is not stable, and it is varied during each program run, which means it is not a repeatable approach. Using randomly selected features, the HMAX has an inconstant classification rate. We propose to change the strategy of feature selection in the standard HMAX. By repeatable feature selecting, the HMAX achieves a very good repeatable performance which is more reliable in comparison with the previous result. To cope with unrepeatability in the HMAX, we suggest that corners which are extracted by the Harris corner detection can be selected as key points. By this alternation, we receive a higher classification rate and a lower computation time. The proposed approach shows excellent performance especially when the number of training images and extracted features is low. In the training stage, only five images for positive classes and five images for negative classes are used. Classification rate and time consumption are evaluated in Caltech dataset. Furthermore, the effect of the number of feature is demonstrated in both new approach and the standard HMAX features.
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