DaneshPanah Mehdi, Javidi Bahram, Watson Edward A
Dept of Electrical and Computer Eng, University of Connecticut, Storrs, Connecticut 06269, USA.
Opt Express. 2010 Dec 6;18(25):26450-60. doi: 10.1364/OE.18.026450.
Three dimensional (3D) imaging systems have been recently suggested for passive sensing and recognition of objects in photon-starved environments where only a few photons are emitted or reflected from the object. In this paradigm, it is important to make optimal use of limited information carried by photons. We present a statistical framework for 3D passive object recognition in presence of noise. Since in quantum-limited regime, detector dark noise is present, our approach takes into account the effect of noise on information bearing photons. The model is tested when background noise and dark noise sources are present for identifying a target in a 3D scene. It is shown that reliable object recognition is possible in photon-counting domain. The results suggest that with proper translation of physical characteristics of the imaging system into the information processing algorithms, photon-counting imagery can be used for object classification.
最近有人提出三维(3D)成像系统可用于在光子匮乏环境中对物体进行被动传感和识别,在这种环境中物体仅发射或反射少量光子。在这种模式下,充分利用光子携带的有限信息非常重要。我们提出了一个存在噪声时3D被动物体识别的统计框架。由于在量子极限状态下存在探测器暗噪声,我们的方法考虑了噪声对携带信息光子的影响。当存在背景噪声和暗噪声源时,对该模型进行测试以识别三维场景中的目标。结果表明在光子计数领域进行可靠的物体识别是可能的。结果表明,通过将成像系统的物理特性适当地转化为信息处理算法,光子计数成像可用于物体分类。