6. Performance of the global detection approach
For each indication identified by the U-Net and labeled in the 3D volume, a set of three images centered on the indication is sent to the CT-Casting-Net for classification. Only indications classified as defects three times are retained for further processing.
This approach was validated on a set of 6 tomographic volumes not used for training. The performances obtained are detailed in table 4 . The number of objects before classification corresponds to the number of indications segmented by the U-Net: this number is very high due to the over-segmentation adopted. The number of objects after classification corresponds to the number of indications classified as defects by the CT-Casting-Net. This number is much smaller, since all indications classified as false alarms are removed. The probability of detection...
Exclusive to subscribers. 97% yet to be discovered!
You do not have access to this resource.
Click here to request your free trial access!
Already subscribed? Log in!
The Ultimate Scientific and Technical Reference
This article is included in
Software technologies and System architectures
This offer includes:
Knowledge Base
Updated and enriched with articles validated by our scientific committees
Services
A set of exclusive tools to complement the resources
Practical Path
Operational and didactic, to guarantee the acquisition of transversal skills
Doc & Quiz
Interactive articles with quizzes, for constructive reading
Performance of the global detection approach
Bibliography
- (1) - ASTM International - ASTM E2422-17, Standard Digital Reference Images for Inspection of Aluminum Castings, - ASTM International, West Conshohocken, PA (2017), http://www.astm.org
- (2) - SUN (W.),...
Exclusive to subscribers. 97% yet to be discovered!
You do not have access to this resource.
Click here to request your free trial access!
Already subscribed? Log in!
The Ultimate Scientific and Technical Reference