Self-Supervised Anomaly Detection in complex-valued SAR imaging

When:
07/12/2023 all-day
2023-12-07T01:00:00+01:00
2023-12-07T01:00:00+01:00

Offre en lien avec l’Action/le Réseau : – — –/– — –

Laboratoire/Entreprise : ONERA / SONDRA, CentraleSupelec
Durée : 36 mois
Contact : chengfang.ren@centralesupelec.fr
Date limite de publication : 2023-12-07

Contexte :
Deep anomaly detection methods leverage neural networks to automatically extract crucial data features, mapping high-dimensional data into a more manageable, lower-dimensional latent space, thereby significantly enhancing anomaly detection performance. One standard method for anomaly detection is to utilize Autoencoders (AE) for data encoding and reconstruction, detecting anomalies based on reconstruction errors [S. Sinha, 20, S. Mabu, 21]. Due to the presence of speckle noise in SAR images, [M. Muzeau, 2022] proposed to denoise SAR images using the MERLIN algorithm [E. Dalsasso, 2021b] based on the noise2noise principle [J. Lehtinen, 18, E. Dalsasso, 21a]. This pre-processing step leads to better compression in the latent space, subsequently improving the detection performance. Further extension in [M. Muzeau, 23] proposed to guide the Adversarial AE (AAE) in the training process by filtering anomalies using an RX detector [I. S. Reed, 90].
On the other hand, self-supervised learning leverages pretext tasks to extract supervised information from unsupervised data, thereby learning valuable feature representations for downstream tasks such as classification, object detection, and segmentation [M. Caron, 21]. Self-supervised anomaly detection methods acquire data representations by creating supervised pretext tasks. The key to constructing these pretext tasks is to guide the model in learning a specialized representation suitable for anomaly detection, distinct from the general representation obtained through unsupervised learning.

Sujet :
This Ph.D. aims to investigate the above-mentioned methods for SAR anomaly detection, exploiting SAR diversities: polarimetric and interferometric channels [Pottier, 09], multi-bands, and multi-looks representation [A. Mian, 19]. Particular attention is dedicated to the phase information of the complex-valued SAR images, which is crucial to assessing the spectral (range-azimuth) bandwidth and keeping the coherency in polarimetric and interferometric channels. The Ph.D. student will rely on the previously developed open-source library (https://github.com/NEGU93) developed in [Barrachina, 19] for complex-valued radar data and based on Tensorflow although recent developments of the PyTorch framework now allow for processing complex-valued tensors with differentiable computational graphs. Using this library, it is possible to address and analyze any recent Machine Learning components like Autoencoders, Transformers, etc., through challenging theoretical methodologies (SAR denoising, self-supervised learning, characterization of latent spaces, etc.).

References:

• [S. Sinha, 20] S. Sinha et al., “Variational autoencoder anomaly detection of avalanche deposits in satellite SAR imagery,” in Proc. 10th Int. Conf. Climate Inform., 2020, pp. 113–119.
• [S. Mabu, 21] S. Mabu, S. Hirata, and T. Kuremoto, “Anomaly detection
using convolutional adversarial autoencoder and one-class SVM for landslide area detection from synthetic aperture radar images,” J. Robot., Netw. Artif. Life, vol. 8, no. 2, pp. 139–144, 2021.
• [M. Muzeau, 22] M. Muzeau, C. Ren, S. Angelliaume, M. Datcu and J. –
P. Ovarlez, “Self-Supervised Learning Based Anomaly Detection in Synthetic Aperture Radar Imaging,” in IEEE Open Journal of Signal Processing, vol. 3, pp. 440-449, 2022.
• [M. Muzeau, 23] M. Muzeau, C. Ren, S. Angelliaume, M. Datcu and J. . -P.
Ovarlez, “Self-Supervised SAR Anomaly Detection Guided with RX Detec-
tor,” IGARSS 2023 – 2023 IEEE International Geoscience and Remote Sensing Symposium, Pasadena, CA, USA, 2023, pp. 1918-1921.
• [J. Lehtinen, 18] J. Lehtinen et al., “Noise2Noise: Learning image restoration without clean data,” in Proc. 35th Int. Conf. Mach. Learn., 2018, vol. 80, pp. 2965–2974.
• [E. Dalsasso, 21a] E. Dalsasso, L. Denis, and F. Tupin, “SAR2SAR: A semi-
supervised despeckling algorithm for SAR images,” IEEE J. Sel. Topics Appl.
Earth Observ. Remote Sens., vol. 14, pp. 4321–4329, 2021.
• [E. Dalsasso, 21b] E. Dalsasso, L. Denis and F. Tupin, (2021), “As if by magic: self-supervised training of deep despeckling networks with MERLIN”, arXiv preprint arXiv:2110.13148.
• [I. S. Reed, 90] I. S. Reed and X. Yu, “Adaptive multiple-band CFAR detection of an optical pattern with unknown spectral distribution,” IEEE Transactions on acoustics, speech, and Signal Processing, vol. 38, no. 10, pp. 1760–1770, 1990.
• [M. Caron, 21] M. Caron, H. Touvron, I. Misra, H. Jégou, J. Mairal, P. Bo-
janowski, and A. Joulin. Emerging properties in self-supervised vision transformers, in Proceedings of the International Conference on Computer Vision (ICCV), 2021.
• [A. Mian, 19] A. Mian, J.-P. Ovarlez, A. M. Atto and G. Ginolhac, “Design of New Wavelet Packets Adapted to High-Resolution SAR Images With an Application to Target Detection”, Geoscience and Remote Sensing, IEEE
Transactions on, 57(6), pp.3919-3932, June 2019.
• [Pottier, 09] J.-S. Lee and E. Pottier, “Polarimetric Radar Imaging: From
Basics to Applications”, CRC Press, 2009.
• [Barrachina, 23] J.-A. Barrachina, C. Ren, G. Vieillard, C. Morisseau, and J.-
P. Ovarlez, “Theory and implementation of complex-valued neural networks,” arXiv preprint arXiv:2302.08286, Feb. 2023.

Profil du candidat :
Master in machine learning, applied mathematics, statistics, or signal processing. Good technical skills in programming. Eager to work in the radar and SAR imaging field.

Formation et compétences requises :
Master in machine learning, applied mathematics, statistics, or signal processing. Good technical skills in programming. Eager to work in the radar and SAR imaging field.

Adresse d’emploi :
The Ph.D. student will be hosted at the SONDRA laboratory (joint international laboratory between CentraleSupélec, ONERA, DSO National Laboratories, and National University of Singapore) in Paris-Saclay campus in Gif-sur-Yvette and at the MATS research unit (Advanced Methods in Signal Processing) of the Electromagnetism and Radar Department at ONERA’s Palaiseau site. Due to the international visibility of the lab, some overseas exchanges with Singapore could be easily considered. The SONDRA laboratory may finance any conference travel by the doctoral student.

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