We present Star-Net, a multi-branch convolutional network architecture to deal with the multiple-source (multimodal) image segmentation. It is composed of several satellite networks, one per source, connected in the corresponding layers through a central unit whose role is to calculate and assign the weights to the sources according to their relevance. In each layer of the network, the weights are different, case-specific and dynamically calculated. With this architecture, we reward the relevant sources, penalizing the less relevant ones. StarNet takes into account the non-linear behaviour of the image interpretation, so as the active role of one source in a layer can be reduced in another, possibly growing up again in a following layer. When used in the field of multimodal Magnetic Resonance Imaging (MRI) segmentation, we have found that Star-Net is capable to speed up the training and improving the performance compared to traditional CNN architectures. Additionally and more importantly, it allows to perform case-specific analyses of network activation and increases network transparency.

Star-Net: a Multi-Branch Convolutional Network for Multiple Source Image Segmentation

Cinque, L;Nappi, M;Polsinelli, M;Tortora, G
2022-01-01

Abstract

We present Star-Net, a multi-branch convolutional network architecture to deal with the multiple-source (multimodal) image segmentation. It is composed of several satellite networks, one per source, connected in the corresponding layers through a central unit whose role is to calculate and assign the weights to the sources according to their relevance. In each layer of the network, the weights are different, case-specific and dynamically calculated. With this architecture, we reward the relevant sources, penalizing the less relevant ones. StarNet takes into account the non-linear behaviour of the image interpretation, so as the active role of one source in a layer can be reduced in another, possibly growing up again in a following layer. When used in the field of multimodal Magnetic Resonance Imaging (MRI) segmentation, we have found that Star-Net is capable to speed up the training and improving the performance compared to traditional CNN architectures. Additionally and more importantly, it allows to perform case-specific analyses of network activation and increases network transparency.
2022
978-1-6654-6495-6
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11386/4846171
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