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--- |
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tags: |
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- image-classification |
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- pytorch |
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library_name: generic |
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metrics: |
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- accuracy |
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model-index: |
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- name: krenzcolor_chkpt_classifier |
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results: |
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- task: |
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name: Image Classification |
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type: pair-classification |
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metrics: |
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- name: Accuracy |
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type: accuracy |
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value: 0.9196428656578064 |
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--- |
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# krenzcolor_chkpt_classifier |
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## KK色彩課程-作業節點檢查AI |
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Demo for checkpoint classification of the homework in Art course by "Krenz Cushart" |
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這個AI分類器會判斷同學在課程中L3,L4的臨摹中的三個檢查點,並檢查通過與否。 |
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詳細六個類別如下(以"/"區分): |
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- chk1_fail / chk1_pass / chk2_fail / chk2_pass / chk3_fail / chk3_pass |
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其中chk1,chk2,chk3分別代表檢查點一、二、三;fail及pass代表作業通過與否。 |
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## 快速導覽: |
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將以下圖片上傳至右側方框 (Hosted inference API) |
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#### chk1_pass |
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![chk1_pass](images/L4_1_chk1_pass.jpg) |
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#### chk2_pass |
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![chk2_pass](images/L4_1_chk2_pass.jpg) |
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#### chk3_pass |
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![chk3_pass](images/L4_1_chk3_pass.jpg) |
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## 使用方法 |
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### 使用以下樣板填入臨摹(注意:務必將圖調整至224 x 224 pixels的大小再放入樣板右側空白處) |
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![L3-1老頭石膏](images/L3_1_tmp.jpg) |
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![L3-2布料](images/L3_2_tmp.jpg) |
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![L3-1雞](images/L4_1_tmp.jpg) |
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![L3-1雲](images/L4_2_tmp.jpg) |
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### 將圖片上傳到右側方匡 |
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![將圖片上傳到右側方匡](images/input_box.png) |
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### 上傳後會顯示各類別的機率 |
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![範例](images/example.png) |
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