Learn new objects without forgetting old ones by learning causal features with ICOD

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Learn new objects without forgetting old ones by learning causal features with ICOD

Learning Causal Features for Incremental Object Detection
arXiv paper abstract https://arxiv.org/abs/2403.00591
arXiv PDF paper https://arxiv.org/pdf/2403.00591.pdf

… propose an incremental causal object detection (ICOD) model by learning causal features, which can adapt to more tasks.

Traditional object detection models, unavoidably depend on the data-bias or data-specific features to get the detection results, which can not adapt to the new task.

When the model meets the requirements of incremental learning, the data-bias information

is not beneficial to the new task, and the incremental learning may eliminate these features and lead to forgetting.

… ICOD is introduced to learn the causal features, rather than the data-bias features when training the detector.

Thus, when the model is implemented to a new task, the causal features of the old task can aid the incremental learning process to alleviate the catastrophic forgetting problem.

… shows a causal feature without data-bias can make the model adapt to new tasks better …

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AI News Clips by Morris Lee: News to help your R&D
AI News Clips by Morris Lee: News to help your R&D

Written by AI News Clips by Morris Lee: News to help your R&D

A computer vision consultant in artificial intelligence and related hitech technologies 37+ years. Am innovator with 66+ patents and ready to help a firm's R&D.

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