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Accumulated Stability Voting: A Robust Descriptor from Descriptors of Multiple Scales

机译:累积稳定性投票:来自多尺度描述符的鲁棒描述符

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摘要

This paper proposes a novel local descriptor through accumulated stability voting (ASV). The stability of feature dimensions is measured by their differences across scales. To be more robust to noise, the stability is further quantized by thresholding. The principle of maximum entropy is utilized for determining the best thresholds for maximizing discriminant power of the resultant descriptor. Accumulating stability renders a real-valued descriptor and it can be converted into a binary descriptor by an additional thresholding process. The real-valued descriptor attains high matching accuracy while the binary descriptor makes a good compromise between storage and accuracy. Our descriptors are simple yet effective, and easy to implement. In addition, our descriptors require no training. Experiments on popular benchmarks demonstrate the effectiveness of our descriptors and their superiority to the state-of-the-art descriptors.
机译:本文通过累积稳定投票(ASV)提出了一种新颖的局部描述符。要素尺寸的稳定性通过跨尺度的差异来衡量。为了对噪声更鲁棒,通过阈值对稳定性进行了进一步量化。利用最大熵原理来确定最佳阈值,以使结果描述符的判别能力最大化。累积稳定性提供了一个实值描述符,并且可以通过附加的阈值处理将其转换为二进制描述符。实值描述符具有很高的匹配精度,而二进制描述符则在存储和精度之间取得了很好的折衷。我们的描述符简单而有效,并且易于实现。另外,我们的描述符不需要任何培训。在流行基准测试上的实验证明了我们的描述符的有效性及其相对于最新描述符的优越性。

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