Litcius/Paper detail

Towards Reduced CNNs for De-Noising Phase Images Corrupted with Speckle Noise

Marie Tahon, Silvio Montrésor, Pascal Picart

2021Photonics27 citationsDOIOpen Access PDF

Abstract

Digital holography is a very efficient technique for 3D imaging and the characterization of changes at the surfaces of objects. However, during the process of holographic interferometry, the reconstructed phase images suffer from speckle noise. In this paper, de-noising is addressed with phase images corrupted with speckle noise. To do so, DnCNN residual networks with different depths were built and trained with various holographic noisy phase data. The possibility of using a network pre-trained on natural images with Gaussian noise is also investigated. All models are evaluated in terms of phase error with HOLODEEP benchmark data and with three unseen images corresponding to different experimental conditions. The best results are obtained using a network with only four convolutional blocks and trained with a wide range of noisy phase patterns.

Topics & Concepts

Speckle patternComputer scienceSpeckle noiseHolographyArtificial intelligenceDigital holographyNoise (video)Electronic speckle pattern interferometryHolographic interferometryPhase (matter)Gaussian noiseComputer visionBenchmark (surveying)Convolutional neural networkPattern recognition (psychology)OpticsImage (mathematics)PhysicsGeodesyGeographyQuantum mechanicsDigital Holography and MicroscopyOptical measurement and interference techniquesImage Processing Techniques and Applications
Towards Reduced CNNs for De-Noising Phase Images Corrupted with Speckle Noise | Litcius