CVAILGROMay 9, 2017

CORe50: a New Dataset and Benchmark for Continuous Object Recognition

arXiv:1705.03550v1575 citations
Originality Synthesis-oriented
AI Analysis

This provides a resource for evaluating techniques in continuous learning for real-world applications like robotic vision, but it is incremental as it focuses on dataset creation rather than novel methods.

The authors tackled the lack of datasets for continuous object recognition by proposing CORe50, a new dataset and benchmark, and introduced baseline approaches for various continuous learning scenarios.

Continuous/Lifelong learning of high-dimensional data streams is a challenging research problem. In fact, fully retraining models each time new data become available is infeasible, due to computational and storage issues, while naïve incremental strategies have been shown to suffer from catastrophic forgetting. In the context of real-world object recognition applications (e.g., robotic vision), where continuous learning is crucial, very few datasets and benchmarks are available to evaluate and compare emerging techniques. In this work we propose a new dataset and benchmark CORe50, specifically designed for continuous object recognition, and introduce baseline approaches for different continuous learning scenarios.

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