Operational Support Estimator Networks
| المؤلف | Ahishali, Mete |
| المؤلف | Yamac, Mehmet |
| المؤلف | Kiranyaz, Serkan |
| المؤلف | Gabbouj, Moncef |
| تاريخ الإتاحة | 2025-11-20T10:54:34Z |
| تاريخ النشر | 2024 |
| اسم المنشور | IEEE Transactions on Pattern Analysis and Machine Intelligence |
| المصدر | Scopus |
| المعرّف | http://dx.doi.org/10.1109/TPAMI.2024.3406473 |
| الاقتباس | M. Ahishali, M. Yamac, S. Kiranyaz and M. Gabbouj, "Operational Support Estimator Networks," in IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 46, no. 12, pp. 8442-8458, Dec. 2024, doi: 10.1109/TPAMI.2024.3406473. |
| الاقتباس | en |
| الرقم المعياري الدولي للكتاب | 1628828 |
| الملخص | In this work, we propose a novel approach called Operational Support Estimator Networks (OSENs) for the support estimation task. Support Estimation (SE) is defined as finding the locations of non-zero elements in sparse signals. By its very nature, the mapping between the measurement and sparse signal is a non-linear operation. Traditional support estimators rely on computationally expensive iterative signal recovery techniques to achieve such non-linearity. Contrary to the convolutional layers, the proposed OSEN approach consists of operational layers that can learn such complex non-linearities without the need for deep networks. In this way, the performance of non-iterative support estimation is greatly improved. Moreover, the operational layers comprise so-called generative super neurons with non-local kernels. The kernel location for each neuron/feature map is optimized jointly for the SE task during training. We evaluate the OSENs in three different applications: i. support estimation from Compressive Sensing (CS) measurements, ii. representation-based classification, and iii. learning-aided CS reconstruction where the output of OSENs is used as prior knowledge to the CS algorithm for enhanced reconstruction. Experimental results show that the proposed approach achieves computational efficiency and outperforms competing methods, especially at low measurement rates by significant margins. |
| راعي المشروع | This work was supported by the Business Finland project Advanced Machine Learning for Industrial Applications (AMaLIA) under NSF IUCRC Center for Big Learning. |
| الناشر | IEEE Computer Society |
| الموضوع | compressive sensing machine learning operational layers sparse representation Support estimation |
| النوع | Article |
| الصفحات | 8442-8458 |
| رقم العدد | 12 |
| رقم المجلد | 46 |
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