A fuzzy controller-based framework dynamically selects video model scales using frame correlations and device resources to balance inference accuracy and efficiency.
Breaking the accuracy-resource dilemma: a lightweight adaptive video inference enhancement
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abstract
Existing video inference (VI) enhancement methods typically aim to improve performance by scaling up model sizes and employing sophisticated network architectures. While these approaches demonstrated state-of-the-art performance, they often overlooked the trade-off of resource efficiency and inference effectiveness, leading to inefficient resource utilization and suboptimal inference performance. To address this problem, a fuzzy controller (FC-r) is developed based on key system parameters and inference-related metrics. Guided by the FC-r, a VI enhancement framework is proposed, where the spatiotemporal correlation of targets across adjacent video frames is leveraged. Given the real-time resource conditions of the target device, the framework can dynamically switch between models of varying scales during VI. Experimental results demonstrate that the proposed method effectively achieves a balance between resource utilization and inference performance.
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cs.CV 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Breaking the accuracy-resource dilemma: a lightweight adaptive video inference enhancement
A fuzzy controller-based framework dynamically selects video model scales using frame correlations and device resources to balance inference accuracy and efficiency.