Reducing interference between multiple structured light depth sensors using motion

Andrew Maimone, H. Fuchs
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引用次数: 135

Abstract

We present a method for reducing interference between multiple structured light-based depth sensors operating in the same spectrum with rigidly attached projectors and cameras. A small amount of motion is applied to a subset of the sensors so that each unit sees its own projected pattern sharply, but sees a blurred version of the patterns of other units. If high spacial frequency patterns are used, each sensor sees its own pattern with higher contrast than the patterns of other units, resulting in simplified pattern disambiguation. An analysis of this method is presented for a group of commodity Microsoft Kinect color-plus-depth sensors with overlapping views. We demonstrate that applying a small vibration with a simple motor to a subset of the Kinect sensors results in reduced interference, as manifested as holes and noise in the depth maps. Using an array of six Kinects, our system reduced interference-related missing data from from 16.6% to 1.4% of the total pixels. Another experiment with three Kinects showed an 82.2% percent reduction in the measurement error introduced by interference. A side-effect is blurring in the color images of the moving units, which is mitigated with post-processing. We believe our technique will allow inexpensive commodity depth sensors to form the basis of dense large-scale capture systems.
利用运动减少多个结构光深度传感器之间的干扰
我们提出了一种减少多个结构光深度传感器之间的干扰的方法,这些传感器在同一光谱下工作,具有刚性连接的投影仪和相机。少量的运动应用于传感器的一个子集,这样每个单元都能清晰地看到自己的投影模式,但看到其他单元模式的模糊版本。如果使用高空间频率模式,每个传感器看到自己的模式具有比其他单元的模式更高的对比度,从而简化了模式消歧。以一组具有重叠视图的微软Kinect颜色加深度传感器为例,对该方法进行了分析。我们证明,在Kinect传感器的一个子集上应用一个简单电机的小振动可以减少干扰,如深度图中的洞和噪音。使用6个kinect阵列,我们的系统将与干扰相关的丢失数据从总像素的16.6%减少到1.4%。另一项使用三个kinect的实验表明,干涉引入的测量误差减少了82.2%。一个副作用是运动单元的彩色图像模糊,这可以通过后期处理来缓解。我们相信我们的技术将使廉价的商品深度传感器成为密集大规模捕获系统的基础。
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