Crynodeb
Smart films incorporating natural pigments offer a sustainable, non- invasive solution for detecting spoilage in perishable food products. These intelligent indicators undergo visible colour changes in re- sponse to volatile nitrogen compounds released during microbial degradation, enabling real-time freshness monitoring. However, current applications rely heavily on subjective human interpre- tation, limiting their reliability across diverse conditions. Exist- ing applications of machine learning techniques are limited to a small sample set with specific settings of film development and data collection. This study explores a cost-effective alternative to classify spoilage stages using image data and metadata extracted from the published literature. A dataset of images of anthocyanin- based smart films was compiled and standardised, with samples categorised as ‘Spoiled’ or ‘Not Spoiled’. Supervised learning mod- els, including K-Nearest Neighbour, Naive Bayes, Decision Tree, Support Vector Machines, Artificial Neural Networks and Random Forest, were trained to predict spoilage, achieving the promising baseline accuracy.
| Iaith wreiddiol | Saesneg |
|---|---|
| Teitl | International Conference on Computer Science and Artificial Intelligence 2025 |
| Statws | Cyhoeddwyd - 2025 |
| Digwyddiad | 9th International Conference on Computer Science and Artificial Intelligence - Beijing, Tsieina Hyd: 12 Rhag 2025 → 15 Rhag 2025 |
Cynhadledd
| Cynhadledd | 9th International Conference on Computer Science and Artificial Intelligence |
|---|---|
| Teitl cryno | CSAI2025 |
| Gwlad/Tiriogaeth | Tsieina |
| Dinas | Beijing |
| Cyfnod | 12 Rhag 2025 → 15 Rhag 2025 |