CVAIApr 4

Determined by User Needs: A Salient Object Detection Rationale Beyond Conventional Visual Stimuli

arXiv:2604.0352683.6h-index: 2
Predicted impact top 24% in CV · last 90 daysOriginality Incremental advance
AI Analysis

This addresses a problem for users and developers in computer vision by shifting from visual-based to need-based detection, though it is incremental as it builds on existing SOD frameworks.

The paper tackles the problem that existing salient object detection methods rely on passive visual stimuli, ignoring user needs, which can lead to unsatisfactory results and limit downstream tasks like ranking; they propose a new UserSOD task to detect objects aligned with proactive user needs, but face a challenge due to the lack of datasets.

Existing \textbf{s}alient \textbf{o}bject \textbf{d}etection (SOD) methods adopt a \textbf{passive} visual stimulus-based rationale--objects with the strongest visual stimuli are perceived as the user's primary focus (i.e., salient objects). They ignore the decisive role of users' \textbf{proactive needs} in segmenting salient objects--if a user has a need before seeing an image, the user's salient objects align with their needs, e.g., if a user's need is ``white apple'', when this user sees an image, the user's primary focus is on the ``white apple'' or ``the most white apple-like'' objects in the image. Such an oversight not only \textbf{fails to satisfy users}, but also \textbf{limits the development of downstream tasks}. For instance, in salient object ranking tasks, focusing solely on visual stimuli-based salient objects is insufficient for conducting an analysis of fine-grained relationships between users' viewing order (usually determined by user's needs) and scenes, which may result in wrong ranking results. Clearly, it is essential to detect salient objects based on user needs. Thus, we advocate a \textbf{User} \textbf{S}alient \textbf{O}bject \textbf{D}etection (UserSOD) task, which focuses on \textbf{detecting salient objects align with users' proactive needs when user have needs}. The main challenge for this new task is the lack of datasets for model training and testing.

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