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author | Vasil Zlatanov <vasko@e4-pattern-vm.europe-west4-a.c.electric-orbit-223819.internal> | 2018-12-05 16:36:15 +0000 |
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committer | Vasil Zlatanov <vasko@e4-pattern-vm.europe-west4-a.c.electric-orbit-223819.internal> | 2018-12-05 16:36:15 +0000 |
commit | e42170b70bb9710d73ff22fcd06ae8724a78cbd1 (patch) | |
tree | 3edc5777e62537b1c79140d89b648b3829564b68 /report/metadata.yaml | |
parent | bcd380b631184e9d4e58c0aa80afb17727581066 (diff) | |
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Move part1 parts to seperate folder
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diff --git a/report/metadata.yaml b/report/metadata.yaml deleted file mode 100755 index 5c4dde1..0000000 --- a/report/metadata.yaml +++ /dev/null @@ -1,17 +0,0 @@ ---- -title: 'EE4-68 Pattern Recognition (2018-2019) CW1' -author: - - name: Vasil Zlatanov (01120518), Nunzio Pucci (01113180) - location: vz215@ic.ac.uk, np1915@ic.ac.uk -numbersections: yes -lang: en -babel-lang: english -abstract: | - In this coursework we analyze the benefits of different face recognition methods. - We look at dimensionality reduction with PCA, obtaining a generative subspace which is very reliable for face reconstruction. Furthermore, we evaluate LDA, which is able to perform reliable classification, generating a discriminative subspace, where separation of classes is easier to identify. - - In the final part we analyze the benefits of using a combined version of the two methods using Fisherfaces and evaluate the benefits of ensemble learning with regards to data and feature space ranodmisation. We find that combined PCA-LDA obtains lower classification error than PCA or LDA individually, while also maintaining low computational costs, allowing us to take advantage of ensemble learning. - - The dataset used includes 52 classes with 10 samples each. The number of features is 2576 (46x56). -... - |