Deep optical coding design in computational imaging

dc.contributor.authorArguello, H
dc.contributor.authorBacca, J
dc.contributor.authorKariyawasam, H
dc.contributor.authorVargas, E
dc.contributor.authorMarquez, M
dc.contributor.authorHettiarachchi, R
dc.contributor.authorGarcia, H
dc.contributor.authorHerath, K
dc.contributor.authorHaputhanthri, U
dc.contributor.authorAhluwalia, BS
dc.contributor.authorSo, P
dc.contributor.authorWadduwage, DN
dc.contributor.authorEdussooriya, CUS
dc.date.accessioned2023-11-29T06:10:29Z
dc.date.available2023-11-29T06:10:29Z
dc.date.issued2023-03-01
dc.description.abstractComputational optical imaging (COI) systems leverage optical coding elements (CEs) in their setups to encode a highdimensional scene in a single or in multiple snapshots and decode it by using computational algorithms. The performance of COI systems highly depends on the design of its main components: the CE pattern and the computational method used to perform a given task. Conventional approaches rely on random patterns or analytical designs to set distribution of the CE. However, the available data and algorithm capabilities of deep neural networks (DNNs) have opened a new horizon in CE data-driven designs that jointly consider the optical and computational decoders. Specifically, by modeling the COI measurements through a fully differentiable image-formation model that considers the physics-based propagation of light and its interaction with the CEs, the parameters that define the CE and the computational decoder can be optimized in an end-to-end (E2E) manner. Moreover, by optimizing just CEs in the same framework, inference tasks can be performed from pure optics. This work surveys the recent advances in CE data-driven design and provides guidelines on how to parameterize different optical elements to include them in the E2E framework. As the E2E framework can handle different inference applications by changing the loss function and the DNN, we present low-level tasks such as spectral imaging reconstruction or high-level tasks such as pose estimation with privacy preservation enhanced by using optimal task-based optical architectures. Finally, we illustrate classification and 3D object-recognition applications performed at the speed of the light using all-optics DNNs.en_US
dc.identifier.citationArguello, H., Bacca, J., Kariyawasam, H., Vargas, E., Marquez, M., Hettiarachchi, R., Garcia, H., Herath, K., Haputhanthri, U., Ahluwalia, B., So, P., Wadduwage, D., & Edussooriya, C. (2023). Deep Optical Coding Design in Computational Imaging: A data-driven framework. IEEE Signal Processing Magazine, 40, 75–88. https://doi.org/10.1109/MSP.2022.3200173en_US
dc.identifier.doi10.1109/MSP.2022.3200173en_US
dc.identifier.issue02en_US
dc.identifier.journalIEEE Signal Processingen_US
dc.identifier.pgnos75-88en_US
dc.identifier.urihttp://dl.lib.uom.lk/handle/123/21781
dc.identifier.volume40en_US
dc.identifier.year2023en_US
dc.language.isoenen_US
dc.titleDeep optical coding design in computational imagingen_US
dc.title.alternativea data-driven frameworken_US
dc.typeArticle-Full-texten_US

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