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Deep Reinforcement Learning for Visual Object Tracking in Videos

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abstract

In this paper we introduce a fully end-to-end approach for visual tracking in videos that learns to predict the bounding box locations of a target object at every frame. An important insight is that the tracking problem can be considered as a sequential decision-making process and historical semantics encode highly relevant information for future decisions. Based on this intuition, we formulate our model as a recurrent convolutional neural network agent that interacts with a video overtime, and our model can be trained with reinforcement learning (RL) algorithms to learn good tracking policies that pay attention to continuous, inter-frame correlation and maximize tracking performance in the long run. The proposed tracking algorithm achieves state-of-the-art performance in an existing tracking benchmark and operates at frame-rates faster than real-time. To the best of our knowledge, our tracker is the first neural-network tracker that combines convolutional and recurrent networks with RL algorithms.

fields

cs.LG 1

years

2025 1

verdicts

UNVERDICTED 1

representative citing papers

RAP: Runtime Adaptive Pruning for LLM Inference

cs.LG · 2025-05-22 · unverdicted · novelty 5.0

RAP is a reinforcement learning framework for runtime-adaptive pruning of LLMs that jointly optimizes model weights and KV-cache usage under varying memory budgets.

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  • RAP: Runtime Adaptive Pruning for LLM Inference cs.LG · 2025-05-22 · unverdicted · none · ref 40 · internal anchor

    RAP is a reinforcement learning framework for runtime-adaptive pruning of LLMs that jointly optimizes model weights and KV-cache usage under varying memory budgets.