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Aggregate classification is generally based on its size, petrographic characteristics, weight, and source. Size classification ranges from coarse to fine aggregates, defined by the size of the particles. Coarse aggregates are particles that do not pass through ASTM sieve No. 4, and aggregates that pass through the sieve are fine aggregates.
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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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Linearity is a system property characterized by a direct input-output relationship, combining homogeneity and additivity.
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Updated: Jan 15, 2026

Author Spotlight: Enhancement of Salient Object Detection for Smart Grid Applications
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Feature Enhancement Module Based on Class-Centric Loss for Fine-Grained Visual Classification.

Daohui Wang, He Xinyu, Shujing Lyu

    IEEE Transactions on Neural Networks and Learning Systems
    |October 9, 2025
    PubMed
    Summary
    This summary is machine-generated.

    A new feature enhancement module improves fine-grained visual classification by refining pixel-level features and using a class-centric loss function. This method boosts accuracy across various network architectures, demonstrating robust performance on bird and lock cylinder datasets.

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    Area of Science:

    • Computer Science
    • Artificial Intelligence
    • Machine Learning

    Background:

    • Fine-grained visual classification (FGVC) is challenging due to subtle inter-class variations.
    • Existing methods often struggle to capture discriminative features necessary for distinguishing similar categories.

    Purpose of the Study:

    • To introduce a novel, versatile feature enhancement module (FEM) for FGVC tasks.
    • To improve the representation of fine-grained features through pixel-level enhancement and weighted fusion.
    • To develop a class-centric loss function for better sample-class alignment.

    Main Methods:

    • The proposed plug-and-play module integrates with various backbone architectures (CNNs and Transformers).
    • It outputs pixel-level feature maps and applies weighted fusion of filtered features.
    • A class-centric loss function is introduced, aligning samples with target class centers and repelling them from similar non-target classes.
    • Soft labels are utilized to prevent overfitting and enhance generalization.

    Main Results:

    • The approach consistently improved accuracy across diverse mainstream backbone architectures.
    • Significant performance gains were observed in fine-grained feature representation.
    • The method achieved state-of-the-art accuracy on the NABirds (NAB) dataset.
    • Top accuracy was also obtained on a proprietary lock cylinder dataset.

    Conclusions:

    • The feature enhancement module offers a versatile and robust solution for FGVC.
    • The class-centric loss function effectively optimizes feature discrimination.
    • The proposed method demonstrates broad applicability and superior performance on challenging fine-grained datasets.