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Hyperparameter Optimization for Tracking with Continuous Deep Q-Learning

机译:通过连续深度Q学习进行跟踪的超参数优化

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Hyperparameters are numerical presets whose values are assigned prior to the commencement of the learning process. Selecting appropriate hyperparameters is critical for the accuracy of tracking algorithms, yet it is difficult to determine their optimal values, in particular, adaptive ones for each specific video sequence. Most hyperparameter optimization algorithms depend on searching a generic range and they are imposed blindly on all sequences. Here, we propose a novel hyperparameter optimization method that can find optimal hyperparameters for a given sequence using an action-prediction network leveraged on Continuous Deep Q-Learning. Since the common state-spaces for object tracking tasks are significantly more complex than the ones in traditional control problems, existing Continuous Deep Q-Learning algorithms cannot be directly applied. To overcome this challenge, we introduce an efficient heuristic to accelerate the convergence behavior. We evaluate our method on several tracking benchmarks and demonstrate its superior performance
机译:超参数是数字预设,其值是在学习过程开始之前分配的。选择合适的超参数对于跟踪算法的准确性至关重要,但是很难确定其最佳值,尤其是对于每个特定视频序列的自适应值。大多数超参数优化算法都依赖于搜索通用范围,并且它们被盲目地强加于所有序列上。在这里,我们提出了一种新颖的超参数优化方法,该方法可以使用基于连续深度Q学习的动作预测网络找到给定序列的最佳超参数。由于用于对象跟踪任务的公共状态空间比传统控制问题中的状态空间要复杂得多,因此无法直接应用现有的连续深层Q学习算法。为了克服这一挑战,我们引入了一种有效的启发式方法来加速收敛行为。我们在多个跟踪基准上评估了我们的方法,并展示了其卓越的性能

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