Abstract

During a radiation treatment, the images of kilovoltage digital reconstructed radiograph (KV-DRR) and megavoltage digital radiograph (MV-DR) are registered to guide the therapy. Such registration is difficult since the images belong to different modalities. To reduce the difficulty, a fractal convolutional network is developed to map MV-DR images into the modality of KV-DRRs. The key idea is to split a hourglass-shape network into multiple similar networks at reduced scale, yielding a fractal topology that is self-similar at multiple scales. This division allows to predict images of unprecedented high resolution at low graphics processing unit memory usage. Experiments demonstrate that perceptual plausible and numerical accurate results are achieved out-competing recent alternative architectures.

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