Image Similarity Assessment for Product Quality Assurance

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Volume Title

Perustieteiden korkeakoulu | Master's thesis

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Mcode

SCI3044

Language

en

Pages

62+8

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Abstract

Image similarity is a Computer Vision technique that assesses the contextual similarity between two images. Therefore, this technique could prove useful in manufacturing quality control, where a product's image can be compared with one or a series of model and functional products' images. This research introduces and benchmarks two novel approaches utilizing the image similarity assessment process as a new approach to product quality control. The first method utilizes a twin neural network structure known as the Siamese Network useful to evaluate image similarity through their feature vector embeddings. On the other hand, the second approach takes a more traditional Machine Learning route by constructing a Table of Scores (ToS) from several image similarity metrics.

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Supervisor

Jung, Alexander

Thesis advisor

Vo Huynh, Quang Nguyen
Olga, Kuznetsova

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