Abstract
In this work, we demonstrate the impact of an unconventional convolutional photonic accelerator, based on an optical spectrum slicing (OSS) [1], on the classification accuracy of objects, generated through a high-frame rate neuromorphic event-based camera [2]. The experimental setup is depicted in Fig.1a. It consists of a 5 mW-632 nm-LED source, two objective lenses with NA=0.65 that concentrate the light beam into a 100 μmX100 μm channel. In our experiments, the targeted objects consist of test spheres, of different diameters (12, 16, and 20 μm), used in aqua solutions. A pump regulated the sphere’s speed to 0.8 m/s. The objects were recorded by a 10 kframe/s capable neuromorphic camera, with a temporal resolution of 1 μs. The camera detects pixel’s contrast changes (events), similar to biological systems [2]. The recorded events were exported into 1 kframes/sec videos through a synthetic frame generator software, resulting to 2988 images per particle [2]. Images were post-processed using only noise reduction by frame subtraction and image cropping so as to reduce data volume to 100 x 100 pixels.
© 2023 IEEE
PDF ArticleMore Like This
Ioannis Tsilikas, Stavros Deligiannidis, Aris Tsirigotis, Georgios N. Tsigaridas, Adonis Bogris, and Charis Mesaritakis
ch_p_17 The European Conference on Lasers and Electro-Optics (CLEO/Europe) 2023
Ioannis Tsilikas, Aris Tsirigotis, Stavros Deligiannidis, Georgios N. Tsigaridas, Adonis Bogris, and Charis Mesaritakis
cl_2_2 The European Conference on Lasers and Electro-Optics (CLEO/Europe) 2023
Hanyu Zheng, Quan Liu, You Zhou, Ivan I. Kravchenko, Yuankai Huo, and Jason Valentine.
FTu2G.2 Flat Optics: Components to Systems (FLATOPTICS) 2023