The JUNO project was aimed at improving the present capabilities of cardiovascular magnetic resonance (CMR) by tackling its limitations with an image processing approach. The specific field of application was fetal CMR, but due to a lack of sufficient data of this type the project focused on the development of methods to improve aspects of CMR imaging in the adult. More specifically, the problem being addressed was the lack of automated techniques to evaluate and improve the quality of short-axis CMR image stacks, which are the reference images for structural and functional assessment of the heart. Quality control on these images is usually performed visually by the radiologist, necessarily leading to operator-dependent evaluations. Moreover, in the last decade several initiatives have been launched both within the EU and worldwide for the acquisition of large-scale open-access databases of CMR images (e.g. the UK Biobank, now ongoing, which will in the end include full CMR scans for 100’000 subjects). While for these large databases visual quality assessment and manual adjustments are unfeasible, failure to correctly identify corrupted scans might affect the results of subsequent automated analyses with undesirable effects. Accordingly, JUNO was dedicated to the development of techniques to allow fully-automated quality assessment and correction of CMR image stacks. The specific issues tackled were the following ones: 1) inter-slice motion detection & correction, 2) heart coverage estimation, 3) cardiac contrast estimation.