neogpx commited on
Commit
9f5128c
·
verified ·
1 Parent(s): f9e9859

Delete README.dataset.txt

Browse files
Files changed (1) hide show
  1. README.dataset.txt +0 -46
README.dataset.txt DELETED
@@ -1,46 +0,0 @@
1
- # Construction-Hazard-Detection > 2025-01-15 2:08pm
2
- https://universe.roboflow.com/javid/construction-hazard-detection-ypdne
3
-
4
- Provided by a Roboflow user
5
- License: CC BY 4.0
6
-
7
- This project focuses on enhancing safety at construction sites by leveraging AI-driven hazard detection. Utilising the YOLO model for object detection, the system identifies potential hazards such as workers without helmets or safety vests, workers near machinery or vehicles, and workers in restricted areas. The project integrates real-time analysis and alert mechanisms to ensure immediate response to identified hazards.
8
-
9
- **GitHub Repository:**
10
-
11
- For more details and to access the source code, visit the [Construction Hazard Detection GitHub repository](https://github.com/yihong1120/Construction-Hazard-Detection).
12
-
13
- **Key Features:**
14
-
15
- - **Real-Time Detection:** Instant identification of safety violations and potential hazards.
16
- - **Multi-Language Support:** Notifications and interface available in multiple languages including Traditional Chinese, Simplified Chinese, French, English, Thai, Vietnamese, and Indonesian.
17
- - **Integration with Messaging Apps:** Real-time notifications and images sent via LINE, Messenger, WeChat, and Telegram.
18
- - **Customisable Detection Items:** Configurable detection parameters to suit various safety requirements.
19
-
20
- **Dataset Information:**
21
-
22
- The dataset used for training includes images from the Construction Site Safety Image Dataset by Roboflow, enriched with additional annotations. The labels include:
23
-
24
- - Hardhat
25
- - Mask
26
- - NO-Hardhat
27
- - NO-Mask
28
- - NO-Safety Vest
29
- - Person
30
- - Safety Cone
31
- - Safety Vest
32
- - Machinery
33
- - Vehicle
34
-
35
- **Models for Detection:**
36
-
37
- | Model | Size (pixels) | mAP (val 50) | mAP (val 50-95) | Params (M) | FLOPs (B) |
38
- | ------- | ------------- | ------------ | --------------- | ---------- | --------- |
39
- | YOLO11n | 640 | 54.1 | 31.0 | 2.6 | 6.5 |
40
- | YOLO11s | 640 | 70.1 | 44.8 | 9.4 | 21.6 |
41
- | YOLO11m | 640 | 73.3 | 42.6 | 20.1 | 68.0 |
42
- | YOLO11l | 640 | 77.3 | 54.6 | 25.3 | 86.9 |
43
- | YOLO11x | 640 | 82.0 | 61.7 | 56.9 | 194.9 |
44
-
45
-
46
- Our comprehensive dataset ensures robust detection capabilities, making construction sites safer and more efficient.