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A novel instrument to compare dynamic object detection algorithms

机译:一种比较动态物体检测算法的新型仪器

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摘要

Nowadays, the amount of dynamic object detection in video sequences algorithms has increased considerably. Notwithstanding the many efforts to provide benchmarking resource, a standard methodology to achieve this evaluation does not exist. Most of the existing benchmarking resources concentrate on the evaluation of the algorithms from a rigid perspective by using just quantitative metric values of the performance. However, these evaluations do not consider important criteria like documentation, auto-adaptability, novelty, speed, which are important factors to consider from a scientific and/or real word application. Therefore, this paper proposes a new methodology to evaluate, compare, and select dynamic object detection algorithms by considering the criteria previously mentioned including performance. The new methodology was developed by analyzing 119 algorithms and the databases CDnet2014, CDnet2012 and BMC The findings indicate that the proposed methodology preserves consistence with some of the rankings in the databases, but it also provides more complete and useful information in the evaluation of the algorithm. (C) 2019 Elsevier B.V. All rights reserved.
机译:如今,视频序列算法中动态对象检测的数量已大大增加。尽管付出了许多努力来提供基准测试资源,但尚不存在实现此评估的标准方法。现有的大多数基准测试资源仅通过使用性能的定量指标值,就从严格的角度集中于对算法的评估。但是,这些评估未考虑文档,自动适应性,新颖性,速度等重要标准,而这些标准是从科学和/或真实单词应用中考虑的重要因素。因此,本文提出了一种通过考虑前面提到的包括性能在内的标准来评估,比较和选择动态物体检测算法的新方法。通过分析119种算法以及CDnet2014,CDnet2012和BMC数据库开发了新方法。研究结果表明,所提出的方法与数据库中的某些排名保持一致,但在算法评估中也提供了更完整和有用的信息。 。 (C)2019 Elsevier B.V.保留所有权利。

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