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Gestalt Principles of Perception01:21

Gestalt Principles of Perception

Gestalt principles provide a framework for understanding how humans perceive objects as unified wholes within their context. These principles are essential in explaining the cognitive processes that make sense of complex visual stimuli by organizing them into coherent groups. One fundamental principle is proximity, which posits that objects located close to each other are perceived as a collective group. For instance, when dots are positioned near one another, the visual system interprets them...

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Explicit Visual Prompting for Universal Foreground Segmentations.

Weihuang Liu, Xi Shen, Chi-Man Pun

    IEEE Transactions on Pattern Analysis and Machine Intelligence
    |October 9, 2025
    PubMed
    Summary
    This summary is machine-generated.

    A new Explicit Visual Prompting (EVP) framework unifies foreground segmentation tasks. This computer vision method uses explicit visual content for efficient, high-performance results across diverse applications without task-specific designs.

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    Area of Science:

    • Computer Vision
    • Machine Learning

    Background:

    • Foreground segmentation is crucial for various computer vision tasks.
    • Existing methods often require domain-specific designs, limiting their generality and robustness.

    Purpose of the Study:

    • To introduce a unified framework for foreground segmentation tasks.
    • To develop a novel visual prompting model that avoids task-specific adaptations.

    Main Methods:

    • Proposed Explicit Visual Prompting (EVP), inspired by NLP's pre-training and prompt tuning.
    • EVP focuses tunable parameters on explicit visual content (frozen patch embeddings, high-frequency components) of individual images.
    • A pre-trained model is frozen, with few extra parameters learning task-specific knowledge.

    Main Results:

    • EVP achieved superior performance compared to full fine-tuning and other parameter-efficient methods.
    • The method demonstrated effectiveness across fourteen datasets and five distinct foreground segmentation tasks.
    • Outperformed existing task-specific methods while maintaining simplicity.

    Conclusions:

    • EVP offers a unified, efficient, and high-performing solution for foreground segmentation.
    • The framework shows scalability across different architectures, pre-trained weights, and tasks.
    • This approach simplifies complex computer vision problems by leveraging explicit visual cues.