https://hub.docker.com/repository/docker/rsingh95/endoscopic_guidance
´´´ docker pull rsingh95/endoscopic_guidance:latest ´´´
Perdiction of the mutiple trained models (NASNet, RESNET, VGG16 VGG19, DENSENET) to be integrated with micro service using Flask API request.
Image is updated and loaded on MongoDB for future use, and the user gets a response of the predicted lable while using service and upload image for prediction.
´´´ Payload as image file only ion .jpeg format ´´´
Response: { "Given class of image is ": "esophagitis-a" }
Response Json from monogo DB:
[
{
"file_name": "ileum_0_7352.jpg",
"predicted_label": "ileum",
"predicted_time": "01-Apr-2021 (18:44:33.998778)"
},
{
"file_name": "bbps-0-1_0_9233.jpg",
"predicted_label": "bbps-0-1",
"predicted_time": "01-Apr-2021 (18:45:38.009416)"
},
{
"file_name": "bbps-2-3_0_7472.jpg",
"predicted_label": "bbps-2-3",
"predicted_time": "01-Apr-2021 (18:46:30.757385)"
},
{
"file_name": "z-line_0_8973.jpg",
"predicted_label": "z-line",
"predicted_time": "01-Apr-2021 (18:47:15.678880)"
}
]
Image is updated and loaded on MongoDB for future use, and the user gets a response of the predicted lable while using service and upload image for prediction.