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Continuous-time systems have continuous input and output signals, with time measured continuously. These systems are generally defined by differential or algebraic equations. For instance, in an RC circuit, the relationship between input and output voltage is expressed through a differential equation derived from Ohm's law and the capacitor relation,
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    Incremental learning enables efficient, human-like AI. This study surveys class-incremental learning methods for image classification, addressing catastrophic forgetting in deep neural networks.

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    Area of Science:

    • Artificial Intelligence
    • Machine Learning
    • Computer Vision

    Background:

    • Incremental learning is crucial for efficient, scalable AI systems, mimicking human learning.
    • Catastrophic forgetting, a performance drop on prior tasks after learning new ones, is the primary challenge.
    • Class-incremental learning (CIL) requires models to distinguish all classes without task identifiers, a recent advancement over task-incremental learning.

    Purpose of the Study:

    • To provide a comprehensive survey of current class-incremental learning methods for image classification.
    • To conduct an extensive experimental evaluation of thirteen CIL methods.
    • To analyze CIL performance under various conditions, including domain shifts and different network architectures.

    Main Methods:

    • Surveying existing literature on class-incremental learning techniques.
    • Implementing and evaluating thirteen distinct CIL methods on multiple large-scale image classification datasets.
    • Designing experimental scenarios to assess performance across varying domain shifts and network architectures.

    Main Results:

    • Extensive experimental evaluation of thirteen class-incremental learning methods.
    • Analysis of method performance across multiple large-scale image classification datasets.
    • Investigation into the impact of small and large domain shifts on CIL performance.

    Conclusions:

    • The survey and evaluation provide a benchmark for class-incremental learning methods in image classification.
    • Understanding performance under different domain shifts is critical for robust CIL.
    • Comparative analysis across network architectures informs future CIL research and development.