Department of Artificial Intelligence, Sungkyunkwan University, Suwon 16419, Korea.
College of Computing and Informatics, Sungkyunkwan University, Suwon 16419, Korea.
Sensors (Basel). 2022 Nov 3;22(21):8477. doi: 10.3390/s22218477.
Non-line-of-sight (NLOS) imaging is aimed at visualizing hidden scenes from an observer's (e.g., camera) viewpoint. Typically, hidden scenes are reconstructed using diffused signals that emit light sources using optical equipment and are reflected multiple times. Optical systems are commonly adopted in NLOS imaging because lasers can transport energy and focus light over long distances without loss. In contrast, we propose NLOS imaging using acoustic equipment inspired by echolocation. Existing acoustic NLOS is a computational method motivated by seismic imaging that analyzes the geometry of underground structures. However, this physical method is susceptible to noise and requires a clear signal, resulting in long data acquisition times. Therefore, we reduced the scan time by modifying the echoes to be collected simultaneously rather than sequentially. Then, we propose end-to-end deep-learning models to overcome the challenges of echoes interfering with each other. We designed three distinctive architectures: an encoder that extracts features by dividing multi-channel echoes into groups and merging them hierarchically, a generator that constructs an image of the hidden object, and a discriminator that compares the generated image with the ground-truth image. The proposed model successfully reconstructed the outline of the hidden objects.
非视线 (NLOS) 成像是旨在从观察者(例如,相机)的视点来可视化隐藏场景。通常,使用扩散信号通过光学设备发射光源并多次反射来重建隐藏场景。由于激光可以在不损失能量的情况下远距离传输能量并聚焦光线,因此光学系统通常被用于 NLOS 成像中。相比之下,我们提出了使用回声定位启发的声学设备进行 NLOS 成像。现有的声学 NLOS 是一种受地震成像启发的计算方法,它分析地下结构的几何形状。然而,这种物理方法容易受到噪声的影响,并且需要清晰的信号,导致数据采集时间较长。因此,我们通过修改要同时而不是顺序收集的回波来减少扫描时间。然后,我们提出了端到端深度学习模型来克服回声相互干扰的挑战。我们设计了三个独特的架构:一个编码器,通过将多通道回波分成组并分层合并来提取特征;一个生成器,构建隐藏物体的图像;一个判别器,将生成的图像与真实图像进行比较。所提出的模型成功地重建了隐藏物体的轮廓。