Biblio

Filters: Author is Gao, Yan  [Clear All Filters]
2022-05-10
Zhang, Lixue, Li, Yuqin, Gao, Yan, Li, Yanfang, Shi, Weili, Jiang, Zhengang.  2021.  A memory-enhanced anomaly detection method for surveillance videos. 2021 International Conference on Electronic Information Engineering and Computer Science (EIECS). :1012–1015.
Surveillance videos can capture anomalies in real scenarios and play an important role in security systems. Anomaly events are unpredictable, which reflect the unsupervised nature of the problem. In addition, it is difficult to construct a complete video dataset which contains all normal events. Based on the diversity of normal events, this paper proposes a memory-enhanced unsupervised method for anomaly detection. The proposed method reconstructs video events by combining prototype features and encoded features to detect anomaly events. Furthermore, a memory module is introduced to better store the prototype patterns of normal events. Experimental results in various benchmark datasets demonstrate the effectiveness and robustness of the proposed method.
2017-08-22
Gao, Yan, Yang, Chunhui.  2016.  Software Defect Prediction Based on Manifold Learning in Subspace Selection. Proceedings of the 2016 International Conference on Intelligent Information Processing. :17:1–17:6.

Software defects will lead to software running error and system crashes. In order to detect software defect as early as possible at early stage of software development, a series of machine learning approaches have been studied and applied to predict defects in software modules. Unfortunately, the imbalanceof software defect datasets brings great challenge to software defect prediction model training. In this paper, a new manifold learning based subspace learning algorithm, Discriminative Locality Alignment(DLA), is introduced into software defects prediction. Experimental results demonstrate that DLA is consistently superior to LDA (Linear Discriminant Analysis) and PCA (Principal Component Analysis) in terms of discriminate information extraction and prediction performance. In addition, DLA reveals some attractive intrinsic properties for numeric calculation, e.g. it can overcome the matrix singular problem and small sample size problem in software defect prediction.