Feb. 13, 2024, 5:47 a.m. | Samiha Mirza Vuong D. Nguyen Pranav Mantini Shishir K. Shah

cs.CV updates on arXiv.org arxiv.org

In the midst of the rapid integration of artificial intelligence (AI) into real world applications, one pressing challenge we confront is the phenomenon of model drift, wherein the performance of AI models gradually degrades over time, compromising their effectiveness in real-world, dynamic environments. Once identified, we need techniques for handling this drift to preserve the model performance and prevent further degradation. This study investigates two prominent quality aware strategies to combat model drift: data quality assessment and data conditioning based …

ai models applications artificial artificial intelligence challenge cs.cv data data quality drift dynamic environments integration intelligence performance quality segmentation semantic world

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