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Deep Learning Approach for Object Classification on Raw and Reconstructed GBSAR Data (CROSBI ID 319733)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Kačan, Marin ; Turčinović, Filip ; Bojanjac, Dario ; Bosiljevac, Marko Deep Learning Approach for Object Classification on Raw and Reconstructed GBSAR Data // Remote sensing, 14 (2022), 22; 5673, 27. doi: 10.3390/rs14225673

Podaci o odgovornosti

Kačan, Marin ; Turčinović, Filip ; Bojanjac, Dario ; Bosiljevac, Marko

engleski

Deep Learning Approach for Object Classification on Raw and Reconstructed GBSAR Data

The availability of low-cost microwave components today enables the development of various high- frequency sensors and radars, including Ground- based Synthetic Aperture Radar (GBSAR) systems. Similar to optical images, radar images generated by applying a reconstruction algorithm on raw GBSAR data can also be used in object classification. The reconstruction algorithm provides an interpretable representation of the observed scene, but may also negatively influence the integrity of obtained raw data due to applied approximations. In order to quantify this effect, we compare the results of a conventional computer vision architecture, ResNet18, trained on reconstructed images versus one trained on raw data. In this process, we focus on the task of multi-label classification and describe the crucial architectural modifications that are necessary to process raw data successfully. The experiments are performed on a novel multi-object dataset RealSAR obtained using a newly developed 24 GHz (GBSAR) system where the radar images in the dataset are reconstructed using the Omega-k algorithm applied to raw data. Experimental results show that the model trained on raw data consistently outperforms the image-based model. We provide a thorough analysis of both approaches across hyperparameters related to model pretraining and the size of the training dataset. This, in conclusion, shows how processing raw data provides overall better classification accuracy, it is inherently faster since there is no need for image reconstruction and it is therefore useful tool in industrial GBSAR applications where processing speed is critical.

object classification ; radar image reconstruction ; convolutional neural networks ; ResNet18 ; GBSAR ; Omega-K algorithm

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Podaci o izdanju

14 (22)

2022.

5673

27

objavljeno

2072-4292

10.3390/rs14225673

Povezanost rada

Elektrotehnika, Interdisciplinarne tehničke znanosti, Računarstvo

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