LORENZO BRIGATO

Dottore di ricerca

ciclo: XXXIV


supervisore: Luca Iocchi

Titolo della tesi: Exploring Image Classification Problems with Sample- and Class-Deficient Data Distributions

In this thesis, we deal with images, i.e., 3D arrays, of different types such as RGB, grayscale, multi-spectral, or synthetically generated ones. Image classification is among the most established tasks for machine learning models. The problem is formally modeled by an unknown joint probability distribution over samples and corresponding labels from which training and testing data are sampled. We are going to treat two variants of this modeling stemming from the hypothesis of having deficiencies induced to either one of the two marginals. Precisely, sample deficiency, which derives from accessing only a limited portion of the sample distribution, and class deficiency, which stems from restricted exposure to the overall category space. Practically speaking, a sample-deficient distribution generates training datasets of small numerosity for current standards (i.e., one or two orders of magnitudes) and hinders large-scale training of networks. On the other hand, a class-deficient distribution does not provide samples of one or more classes. The study of these two research problems has significant practical implications since many recent advances in machine learning have only been achieved by pre-training on massive datasets. Unfortunately, labeling data is a costly and time-consuming process that can not always be achieved. In many applications, large portions of the input space might be hardly accessible (sample deficiency), or eventually totally unknown (class deficiency). Therefore, the practical use of deep neural networks is inherently related to the amount of available labeled training data. Our contributions for sample-deficient scenarios comprise extensive empirical results concerning popular regularization strategies for deep networks such as data augmentation, dropout, and ensembles. Because of the current fragmentation of the state of the art, we propose the first systematic literature overview and common benchmark to allow for objective comparisons between published methods. The broad re-evaluation of state-of-the-art methods on our benchmark led us to the surprising and sobering result that the standard cross-entropy is a highly competitive baseline. Following such findings, we propose a strong baseline. Ultimately, for class-deficient classification problems, we delve deep into the application domain of cyber-physical systems. We treat detection and open-world recognition of anomalies. We experiment with multiple log-to-image transformations, neural architectures, and modeling functions performing a large comparative analysis exploring the overmentioned directions. The methodology presented is intended to be used as a guideline to face the challenging problems presented in this thesis, and, more importantly, to foster the progress of research in these research areas. We provide our open-source implementations for the multiple datasets and solutions presented.

Produzione scientifica

11573/1693341 - 2022 - Image Classification With Small Datasets: Overview and Benchmark
Brigato, L.; Barz, B.; Iocchi, L.; Denzler, J. - 01a Articolo in rivista
rivista: IEEE ACCESS (Piscataway NJ: Institute of Electrical and Electronics Engineers) pp. 49233-49250 - issn: 2169-3536 - wos: WOS:000795496800001 (6) - scopus: 2-s2.0-85130075003 (8)

11573/1618087 - 2021 - Tune It or Don't Use It: Benchmarking Data-Efficient Image Classification
Brigato, L.; Barz, B.; Iocchi, L.; Denzler, J. - 04b Atto di convegno in volume
congresso: 18th IEEE/CVF International Conference on Computer Vision Workshops, ICCVW 2021 (Napoli; Italia)
libro: 2021 IEEE/CVF International Conference on Computer Vision Workshops (ICCVW) - (978-1-6654-0191-3)

11573/1614573 - 2021 - Exploiting Time Dynamics for One-Class and Open-Set Anomaly Detection
Brigato, L.; Sartea, R.; Simonazzi, S.; Farinelli, A.; Iocchi, L.; Napoli, C. - 04b Atto di convegno in volume
congresso: 20th International Conference on Artificial Intelligence and Soft Computing, ICAISC 2021 (Zakopane, Poland)
libro: Artificial Intelligence and Soft Computing. 20th International Conference, ICAISC 2021, Virtual Event, June 21–23, 2021, Proceedings, Part II - (978-3-030-87896-2; 978-3-030-87897-9)

11573/1705180 - 2020 - A Close Look at Deep Learning with Small Data
Brigato, Lorenzo; Iocchi, Luca - 04b Atto di convegno in volume
congresso: International Conference on Pattern Recognition (Milano)
libro: International Conference on Pattern Recognition - (9781728188096)

11573/1350587 - 2019 - RoboCup@ Home-Objects: benchmarking object recognition for home robots
Massouh, Nizar; Brigato, Lorenzo; Iocchi, Luca - 04b Atto di convegno in volume
congresso: 23rd Annual RoboCup International Symposium, RoboCup 2019 (Sydney; Australia)
libro: RoboCup 2019: Robot World Cup XXIII - (978-3-030-35698-9; 978-3-030-35699-6)

11573/1385040 - 2019 - A Comparative Analysis on the use of Autoencoders for Robot Security Anomaly Detection
Olivato, M.; Cotugno, O.; Brigato, L.; Bloisi, D.; Farinelli, A.; Iocchi, L. - 04b Atto di convegno in volume
congresso: 2019 IEEE/RSJ International Conference on Intelligent Robots and Systems, IROS 2019 (Macau; China)
libro: 2019 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) - (978-1-7281-4004-9)

11573/1138010 - 2018 - Qoe-aware UAV flight path design for mobile video streaming in HetNet
Colonnese, Stefania; Carlesimo, Andrea; Brigato, Lorenzo; Cuomo, Francesca - 04b Atto di convegno in volume
congresso: 2018 IEEE 10th Sensor Array and Multichannel Signal Processing Workshop (SAM) (Sheffield; England)
libro: 2018 IEEE 10th Sensor Array and Multichannel Signal Processing Workshop (SAM) - (9781538647523)

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