Goal and Objectives
The primary goal is to extract detailed vegetation segments from field images. These images include additional tools like gray mats and color cards to enhance the accuracy of segmentation. The segments extracted are intended to be used directly for detailed analysis or to create synthetic image data, facilitating diverse machine learning tasks.
Explore the dataset
check the status of the backlog
clean and organize backlogged data, understand it deficiencies, and review issues with current collection and data upload
output: organize the contents of various tables and blob containers into a single working table (.csv).
output 2: generate report of missing data, current status of the dataset and collection across locations, species, and plant types. Generate report about an major issues like the discrepency between uploaded jpgs, raws, and table entries.
Organize data into Batches for preprocessing
organzie data by state, capture date, and 3 hour time intervals
Develop Pipeline roadmap
outline image processing path
Semi-Automatic Labeling Techniques
Utilize a combination of classical digital image processing, and deep learning to generate multiple types of labels for the images, such as bounding boxes and segmentation masks. These labels are critical for training machine learning models and for validating the accuracy of computer vision algorithms.
Automate
Document
Key Features
Feature | Description | Metric |
---|---|---|
Semi-Automatic | satisfaction score | |
Validation
\uD83E\uDD14 Assumptions
\uD83C\uDF1F Milestones
\uD83D\uDDD2 Outputs
ID | Requirement | Category | Description | Format | Notes |
---|---|---|---|---|---|
A.1 | weed semantic mask | dataset | PNG | ||
A.2 | cover crop semantic mask | dataset | PNG |
| |
A.3 | cash crop semantic mask | dataset | PNG | ||
A.4 | bounding box detection | dataset | JSON object | ||
A.5 | Metadata | dataset | JSON | ||
B.5 | Report | Monitoring | PNG/CSV |
Open Questions
Question | Answer | Date Answered |
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