| Literature DB >> 31905641 |
Shengjie Wang1,2,3,4, Bo Liu1,2, Zhen Chen1,2, Heping Li4, Shuo Jiang1,2.
Abstract
To implement target point cloud segmentation for a polarization-modulated 3D imaging system in practical projects, an efficient segmentation concept of multi-dimensional information fusion is designed. As the electron multiplier charge coupled device (EMCCD) camera can only acquire the gray image, but has no ability for time resolution owing to the time integration mechanism, large diameter electro-optic modulators (EOM) are used to provide time resolution for the EMCCD cameras to obtain the polarization-modulated images, from which a 3D image can also be simultaneously reconstructed. According to the characteristics of the EMCCD camera's plane array imaging, the point-to-point mapping relationship between the gray image pixels and point cloud data coordinates is established. The target's pixel coordinate position obtained by image segmentation is mapped to 3D point cloud data to get the segmented target point cloud data. On the basis of the specific environment characteristics of the experiment, the maximum entropy test method is applied to the target segmentation of the gray image, and the image morphological erosion algorithm is used to improve the segmentation accuracy. This method solves the problem that conventional point clouds' segmentation methods cannot effectively segment irregular objects or closely bound objects. Meanwhile, it has strong robustness and stability in the presence of noise, and reduces the computational complexity and data volume. The experimental results show that this method is better for the segmentation of the target in the actual environment, and can avoid the over-segmentation and under-segmentation to some extent. This paper illustrates the potential and feasibility of the segmentation method based on this system in real-time data processing.Entities:
Keywords: LiDAR; data fusion; polarization-modulated; target segmentation
Year: 2019 PMID: 31905641 PMCID: PMC6983055 DOI: 10.3390/s20010179
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Polarization-modulated imaging framework. Here, the first electro-optic modulator (EOM1) manipulates the polarization state of the returned-light to perform time-resolved imaging, while the second modulator (EOM2) acts as a fast shutter for range-gated imaging. Dual electron multiplier charge coupled device (EMCCD) cameras acquire the polarization-modulated images for 3D reconstruction in channel X and Y, respectively. NBF, narrowband filter; PBS, polarization beam splitting.
Figure 2Proposed of segmentation methodology.
Figure 3Experimental setup of super-resolution 3D imaging.
Parameters for 3D Imaging System.
| System Parameters | Value |
|---|---|
| Wavelength | 532 nm |
| Pulse Energy | 200 mJ |
| Pulse Duration | 8 ns |
| Frame Rate | 10 Hz |
| Resolution | 1024 × 1024 pixels |
| Aperture | 200 mm |
Figure 4Polarization-modulated 3D imaging Lidar data: (a) intensity image; (b) maximum entropy segmentation effect; (c) binary diagram effect after erosion; (d) depth image; (e) point clouds in the field of view before segmentation; (f) segmentation of target point cloud.
Figure 5The segmentation effect of the traditional segmentation method on experimental data. (a) Segmentation algorithm based on edge detection; (b) segmentation algorithm based on region growth; (c) segmentation algorithm based on Euclidean clustering.
Figure 6The time of different segmentation algorithms under different cloud numbers.