Real-time Detection of Clustered Events in Video-imaging data with
Applications to Additive Manufacturing
- URL: http://arxiv.org/abs/2004.10977v1
- Date: Thu, 23 Apr 2020 05:32:13 GMT
- Title: Real-time Detection of Clustered Events in Video-imaging data with
Applications to Additive Manufacturing
- Authors: Hao Yan, Marco Grasso, Kamran Paynabar, and Bianca Maria Colosimo
- Abstract summary: We propose an integrated-temporal decomposition and regression approach for anomaly detection in video-imaging data.
The proposed approach was applied to the analysis of video-imaging data to detect and locate local over-heating phenomena ("hotspots") during the layer-wise process in a metal additive manufacturing process.
- Score: 9.018291036304941
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The use of video-imaging data for in-line process monitoring applications has
become more and more popular in the industry. In this framework,
spatio-temporal statistical process monitoring methods are needed to capture
the relevant information content and signal possible out-of-control states.
Video-imaging data are characterized by a spatio-temporal variability structure
that depends on the underlying phenomenon, and typical out-of-control patterns
are related to the events that are localized both in time and space. In this
paper, we propose an integrated spatio-temporal decomposition and regression
approach for anomaly detection in video-imaging data. Out-of-control events are
typically sparse spatially clustered and temporally consistent. Therefore, the
goal is to not only detect the anomaly as quickly as possible ("when") but also
locate it ("where"). The proposed approach works by decomposing the original
spatio-temporal data into random natural events, sparse spatially clustered and
temporally consistent anomalous events, and random noise. Recursive estimation
procedures for spatio-temporal regression are presented to enable the real-time
implementation of the proposed methodology. Finally, a likelihood ratio test
procedure is proposed to detect when and where the hotspot happens. The
proposed approach was applied to the analysis of video-imaging data to detect
and locate local over-heating phenomena ("hotspots") during the layer-wise
process in a metal additive manufacturing process.
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