基于梯度方向直方图熵最小化的径向畸变自动补偿

Yuta Kanuki, N. Ohta, A. Nagai
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引用次数: 3

摘要

用于辅助驾驶的车载摄像头具有广角视角,但同时也存在严重的径向畸变。本文提出了一种不需要特殊校正模式就能自动估计畸变参数的方法。我们的方法利用了这样一个事实,即当我们开车时,我们周围有许多由直线组成的人造物体,例如建筑物、招牌和电线杆。虽然这些直线由于变形在相机图像上变成了曲线,但我们很容易期望经过适当补偿的图像具有最多的直线。为了量化直线的数量,我们在整个图像上引入了定向梯度直方图(HOG)的熵。当图像中直线最多时,HOG的熵值最小。利用这一特性,估计了畸变参数。实验结果表明,所估计的畸变参数能够生成适当的无畸变图像。
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Automatic Compensation of Radial Distortion by Minimizing Entropy of Histogram of Oriented Gradients
A car-mounted camera for driver's assistance has a wide angle view, but at the same time, it also has a serious radial distortion. This paper presents a method which can automatically estimate the distortion parameters without using any specially-made patterns for calibration. Our method uses the fact that we are surrounded by many artificial objects consisted of straight lines, e.g., buildings, signboards, and telephone poles, when we are driving. Although these straight lines become curved lines on the camera image because of the distortion, it is easily expected that the appropriately compensated image has the most straight lines. In order to quantify the amount of straight lines, we introduce the entropy of Histogram of Oriented Gradients (HOG) over the whole image. The entropy of HOG is expected to become minimum when the image has the most straight lines. Using this property, the distortion parameters are estimated. The experimental results show that the estimated distortion parameters generate appropriately undistorted images.
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