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A Maximum Entropy Deep Reinforcement Learning Neural Tracker

机译:最大熵深度强化学习神经跟踪器

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摘要

Tracking of anatomical structures has multiple applications in the field of biomedical imaging, including screening, diagnosing and monitoring the evolution of pathologies. Semi-automated tracking of elongated structures has been previously formulated as a problem suitable for deep reinforcement learning (DRL), but it remains a challenge. We introduce a maximum entropy continuous-action DRL neural tracker capable of training from scratch in a complex environment in the presence of high noise levels, Gaussian blurring and detractors. The trained model is evaluated on two-photon microscopy images of mouse cortex. At the expense of slightly worse robustness compared to a previously applied DRL tracker, we reach significantly higher accuracy, approaching the performance of the standard hand-engineered algorithm used for neuron tracing. The higher sample efficiency of our maximum entropy DRL tracker indicates its potential of being applied directly to small biomedical datasets.
机译:解剖结构的追踪在生物医学成像领域具有多种应用,包括筛查,诊断和监测病理变化。先前已将细长结构的半自动跟踪公式化为适合于深度强化学习(DRL)的问题,但它仍然是一个挑战。我们介绍了一种最大熵连续作用DRL神经跟踪器,该跟踪器能够在复杂的环境中从头开始进行训练,并且存在高噪声水平,高斯模糊和干扰因子。在小鼠皮质的双光子显微镜图像上评估训练后的模型。与以前使用的DRL跟踪器相比,以健壮性稍差为代价,我们达到了更高的精度,接近了用于神经元跟踪的标准手工设计算法的性能。我们的最大熵DRL跟踪器的较高采样效率表明了其直接应用于小型生物医学数据集的潜力。

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