研究目的
To propose a method for the automatic monitoring of the fermentation process based on optical techniques, combining machine learning and superellipsoid model fitting for instance segmentation and parameter estimation of dough objects inside a fermentation chamber.
研究成果
The proposed method enables the continuous monitoring of the volumetric parameters of dough pieces during fermentation, achieving reliable volume estimation with an average deviation of approximately 10%. It represents a significant advancement in the current state of the art by allowing parallel monitoring of multiple dough pieces. However, the optimal fermentation state cannot be determined solely by considering the dough volume gradient, indicating the need for further research.
研究不足
The method's accuracy is affected by the surface curvature of the dough pieces, which limits the measurable surface part. The volume estimation has an average deviation of approximately 10%. The processing time for model fitting is currently around three seconds per object, which could be a limitation for monitoring several dozens of dough pieces simultaneously.