Scale-invariance, good localization and robustness to noise and distortions are the main properties that a local feature detector should possess. Most existing local feature detectors find excessive unstable feature points that increase the number of keypoints to be matched and the computational time of the matching step. In this paper, we show that robust and accurate keypoints exist in the specific scale-space domain. To this end, we first formulate the superimposition problem into a mathematical model and then derive a closed-form solution for multiscale analysis. The model is formulated via difference-of-Gaussian (DoG) kernels in the continuous scale-space domain, and it is proved that setting the scale-space pyramid's blurring ratio and smoothness to 2 and 0.627, respectively, facilitates the detection of reliable keypoints. For the applicability of the proposed model to discrete images, we discretize it using the undecimated wavelet transform and the cubic spline function. Theoretically, the complexity of our method is less than 5\% of that of the popular baseline Scale Invariant Feature Transform (SIFT). Extensive experimental results show the superiority of the proposed feature detector over the existing representative hand-crafted and learning-based techniques in accuracy and computational time. The code and supplementary materials can be found at~{\url{https://github.com/mogvision/FFD}}.
翻译:本地特征探测器发现超不稳定的特征点,这些特征点使要匹配的基点和相匹配步骤的计算时间分别增加到2个和0.627。在本文中,我们显示,在特定的比例空间域中存在稳健和准确的基点。为此,我们首先将叠加问题编入数学模型,然后为多尺度分析找到一种封闭式的解决方案。该模型是通过连续比例空间域的Gausian内核差异(DoG)来制作的,事实证明,将空间金字塔的模糊比率和光滑度分别设定为2个和0.627,有助于检测可靠的关键点。关于拟议模型对离散图像的适用性,我们首先将它分解成一个数学模型,然后为多尺度分析找到一个封闭式模型。从理论上讲,我们的方法的复杂性小于在连续比例空间域域的Gaud-Gaussian(DoG)内核变换(SI-IFT)的基底底基底基底基底基底基底基底基底基底基底基底基底基底基底线(SI)的Qubrual-alalalalalal exal exalalalal exmamacolal exmdealdemocessaldealdealdealdealdestrismaldealdealal exmmmmal exmmmmmmmmmmmmmal exmal exmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmationalationalation