Week 05
Jan 30
we want to run the DNV with a deeper resnet.
- timm library https://huggingface.co/docs/timm/index
- https://walkwithfastai.com/vision.external.timm
- ResNetV2 and BeIT models
different restnet50, restnet101 -> test the images DNV and SD1
- vertical layout
- validation vs test score
restnet101 doing on DNV
DNV model fine tune with SD1 doing on SD1 data
Jan 31
copy the email sent to sean regarding COF in my outline
sqlite
postgis
do point in polygon function... for FME
submit the resnet50 result on portal (need to email Joakim to get name on the portal)
run job for SewerML resnet101
azure - run for 20 images or so to see what kind of bounding box they dectect
UBC azure credit - ask IT people
text recognition
- detect text bounding box
- extract the text from the bounding box
Feb 01
run azure on images of different annotation software
get the count of images base on access and video
- how many images getting added when doing continuous defect
doing the dataflow diagram (vertical) from labelling image to model training to result
- doing summary dataflow diagram (example we using this app to view the result and stuff)
- doing sub dataflow diagram for labelling image
continuous defect:
- doing correlation images between the continous defect (between the start image or end image)
- different camera orientation
Ask PACP instructor about the old PACP codes
Ask Sean if DNV prefer using WRc or PACP.
- Sean replied using PACP
How we deal with the historical data that has the different name.
- Junction (old term)
- new term need to specify what type of junction
- Surface Damage need to modifier
Talk about how we use SewerML model and got good results but did not use for North America utility because they are using different defect code
create bounding box from DEM to get polygon
move the collimate note from meeting with brian to report issue
Feb 02
- look at the bug in Grafana
- Easy OCR: (issue in dnv streamlit)
- we might be able to get better result if we apply image augmentation
- Sudhir suggest convert the pixel that completely black to white and other color as black
- Presentation for sean
- define F1 and F2 score as true positive and true negative. F1 is defined first
- then accurancy
- best result so far
- Having example for images that got define correctly from streamlit
Feb 03
run with resnet152
run SD1 model with DNV (video annotation) resnet101
change pos_weight to weight for `loss=nn.BCEWithLogistsLoss(weigth=tw)
take out all runs with image argumentation and reorganize
defect vs no defect DNV. (just my idea: tell where location of defect are)
future research: detect the distance from video. using spatial correlation to see if to know if video is moving forward
send Dr.Lence reminding her about chris woo's email
three screen shots from SD1 (30 test images)