基于patch的目标分类实验

R. Wijnhoven, P. D. With
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引用次数: 13

摘要

本文提出并实验了一种基于补丁的视频监控目标分类算法。在检测到的运动物体的感兴趣区域(roi,也称为blobs)内,基于大量图像补丁的模板匹配计算特征向量。我们不是直接匹配图像像素,而是在几个尺度上使用gabor滤波版本的输入图像。我们给出了一个新的典型视频监控数据集的结果,该数据集包含超过9000个目标图像。此外,我们展示了PETS 2001数据集和另一个文献数据集的结果。由于算法对物体的方向不是不变的,因此将集合分成四个方向不同的子集。我们展示了由于考虑了面向对象而产生的改进。使用50个或更多的训练样本,我们得到的检测率平均在95%以上,考虑方向后提高到98%。由于该算法具有固有的可扩展性,因此可以在嵌入式系统中实现。
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Experiments with patch-based object classification
We present and experiment with a patch-based algorithm for the purpose of object classification in video surveillance. A feature vector is calculated based on template matching of a large set of image patches, within detected regions-of-interest (ROIs, also called blobs), of moving objects. Instead of matching direct image pixels, we use Gabor-filtered versions of the input image at several scales. We present results for a new typical video surveillance dataset containing over 9,000 object images. Additionally, we show results for the PETS 2001 dataset and another dataset from literature. Because our algorithm is not invariant to the object orientation, the set was split into four subsets with different orientation. We show the improvements, resulting from taking the object orientation into account. Using 50 training samples or higher, our resulting detection rate is on the average above 95%, which improves with the orientation consideration to 98%. Because of the inherent scalability of the algorithm, an embedded system implementation is well within reach.
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