Ensemble-based Adaptive Single-shot Multi-box Detector

V. Thakar, Walid Ahmed, M. M. Soltani, Jia Yuan Yu
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引用次数: 4

Abstract

We propose two improvements to the SSD—single shot multibox detector. First, we propose an adaptive approach for default box selection in SSD. This uses data to reduce the uncertainty in the selection of best aspect ratios for the default boxes and improves performance of SSD for datasets containing small and complex objects (e.g., equipments at construction sites). We do so by finding the distribution of aspect ratios of the given training dataset, and then choosing representative values. Secondly, we propose an ensemble algorithm, using SSD as components, which improves the performance of SSD, especially for small amount of training datasets. Compared to the conventional SSD algorithm, adaptive box selection improves mean average precision by 3%, while ensemble-based SSD improves it by 8%.
基于集成的自适应单发多盒探测器
我们对固态硬盘单发多盒探测器提出了两个改进方案。首先,我们提出了一种SSD默认框选择的自适应方法。这使用数据来减少选择默认框的最佳宽高比的不确定性,并提高包含小型和复杂对象(例如,建筑工地的设备)的数据集的SSD性能。我们通过找到给定训练数据集的纵横比分布,然后选择具有代表性的值来做到这一点。其次,我们提出了一种集成算法,使用SSD作为组件,提高了SSD的性能,特别是对于少量的训练数据集。与传统的SSD算法相比,自适应框选择算法的平均精度提高了3%,而基于集成的SSD算法的平均精度提高了8%。
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