Image Classification for Non-Data Scientists

It provides an image classification sample-based pre-trained deep neural network for non-data scientists. You can test the image classificat
ダウンロード: 17
更新 2023/6/12

MATLAB Image Classification for Non-Data Scientists

It provides an image classification sample-based pre-trained deep neural network for non-data scientists. You can test the image classification by just copying images to a folder.

Requirement

It requires Deep Learning Toolbox. Pleae check Deep Learning Toolbox

It also requires to install app of pre-trained network when you use a new network.

Usage

Run demo_image_classification.

img_dir = 'images'; % specify the image folder

imds_train = load_imds( [img_dir,'/train/'] );
imds_test = load_imds( [img_dir,'/test/'] );

imcl = ImageClassifier('resnet18'); % specify the name of pre-trained netowrk.
imcl = imcl.fit( imds_train, 'num_iter', 10000, 'rho', 0.001, 'reg',1E-8, 'smooth', [0.50, 0.75] ); % parameters
[pred, proba] = imcl.pred( imds_test ); % test with test images
[results, acc] = result_table( pred, proba, imds_test ); % generate result table

Available Pre-trained feature extractor

googlenet, inceptionv3, densenet201, mobilenetv2, resnet18, resnet50, resnet101, xception, inceptionresnetv2, shufflenet, nasnetmobile, nasnetlarge, efficientnetb0, alexnet, vgg16, vgg19

Dataset

It includes four models images.

引用

Masayuki Tanaka (2024). Image Classification for Non-Data Scientists (https://github.com/mastnk/ImageClassificationForNonDataScientists/releases/tag/0.1.0), GitHub. 取得済み .

MATLAB リリースの互換性
作成: R2023a
すべてのリリースと互換性あり
プラットフォームの互換性
Windows macOS Linux
タグ タグを追加

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
バージョン 公開済み リリース ノート
0.1.0

この GitHub アドオンでの問題を表示または報告するには、GitHub リポジトリにアクセスしてください。
この GitHub アドオンでの問題を表示または報告するには、GitHub リポジトリにアクセスしてください。