In recent years the interest in segmentation has been growing, being used in a wide range of applications such as fraud detection, anomaly detection in public health and intrusion detection. We present an ablation study of FgSegNet_v2, analysing its three stages: (i) Encoder, (ii) Feature Pooling Module and (iii) Decoder. The result of this study is a proposal of a variation of the aforementioned method that surpasses state of the art results. Three datasets are used for testing: CDNet2014, SBI2015 and CityScapes. In CDNet2014 we got an overall improvement compared to the state of the art, mainly in the LowFrameRate subset. The presented approach is promising as it produces comparable results with the state of the art (SBI2015 and Cityscapes datasets) in very different conditions, such as different lighting conditions.
翻译:近年来,对分解的兴趣日益浓厚,用于欺诈检测、公共卫生异常检测和入侵检测等多种应用,我们介绍了对FgSegNet_v2的反向研究,分析其三个阶段:(一) 编码器,(二) 特征集合模块和(三) 解码器。这项研究的结果是对上述方法的变异建议,该方法超过了最新结果。有三个数据集用于测试:CDNet2014、SBI2015和CityScapes。在CDNet2014中,我们与艺术状态相比,主要在低FrameRate子集中取得了总体改进。提出的方法很有希望,因为它在非常不同的条件下(如不同的照明条件)产生与艺术状态(SBI2015和城市景色数据集)相似的结果。