@InProceedings{AsmaBensalah2023, author="Asma Bensalah and Antonio Parziale and Giuseppe De Gregorio and Angelo Marcelli and Alicia Fornes and Josep Llados", title="I Can{\textquoteright}t Believe It{\textquoteright}s Not Better: In-air Movement for Alzheimer Handwriting Synthetic Generation", booktitle="21st International Graphonomics Conference", year="2023", pages="136--148", abstract="During recent years, there here has been a boom in terms of deep learning use for handwriting analysis and recognition. One main application for handwriting analysis is early detection and diagnosis in the health field. Unfortunately, most real case problems still suffer a scarcity of data, which makes difficult the use of deep learning-based models. To alleviate this problem, some works resort to synthetic data generation. Lately, more works are directed towards guided data synthetic generation, a generation that uses the domain and data knowledge to generate realistic data that can be useful to train deep learning models. In this work, we combine the domain knowledge about the Alzheimer{\textquoteright}s disease for handwriting and use it for a more guided data generation. Concretely, we have explored the use of in-air movements for synthetic data generation.", optnote="DAG", optnote="exported from refbase (http://refbase.cvc.uab.es/show.php?record=3838), last updated on Thu, 18 Jan 2024 10:07:44 +0100", doi="10.1007/978-3-031-45461-5_10", opturl="https://link.springer.com/chapter/10.1007/978-3-031-45461-5_10" }