Object Detection Cam

Published by: Heng Jia Liang

Description

Object Detection Cam enables you to detect objects in real time using your iPhone or iPad with custom-trained machine learning models.
The app includes a built-in model, YOLOv3Tiny.mlmodel, a lightweight neural network optimized for fast object detection across 80 object classes.
Object Detection Cam Features:
• Load and run custom machine learning models from the built-in library
• Rename or delete models directly within the app
• Capture photos and save them instantly to the Photos library
• Enable sound alerts when an object is detected
• Choose from different sound tones for object detection feedback
• View all class labels supported by the active machine learning model
Adding Custom Models:
You can download pre-trained .mlmodel files and add them via AirDrop to the following directory in the Files app:
[OD Cam]
You may also train your own object detection models using tools such as CreateML or TensorFlow (conversion to .mlmodel required)
Custom Model Tips:
For instance, if you train a model to detect 5 dog breeds—Husky, Bulldog, Golden Retriever, German Shepherd, and Beagle—it will recognize these accurately.
However, detecting a breed like Boxer (not in the model) may yield incorrect results (e.g., identified as Bulldog).
To improve accuracy, include as many relevant object classes as possible during training.
Usage Examples:
• Detect plant species in a jungle environment
• Identify dog breeds using a trained model
• Detect various animal or insect species
• Monitor item status (e.g., identify defective items)
• And many more use cases—powered by your creativity
Quick Start Guide:
1. AirDrop your .mlmodel file (e.g., DogBreedsModel.mlmodel) into the [OD Cam] folder in the Files app
2. Launch Object Detection Cam
3. Go to the Library tab and tap your custom model
4. The camera will now detect objects based on the model’s class labels
5. When an object is detected, a bounding box and label will appear on screen
6. Tap the shutter button to save a photo to your camera roll
[*] Ensure your model is specifically trained for object detection (not image classification or other model types)
What is Object Detection?
Object detection uses machine learning or deep learning algorithms to identify and locate objects within images or video.
While image classification assigns a label to an entire image, object detection involves localizing one or more objects with bounding boxes and assigning them class labels.
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Object Detection Cam FAQ

  • Is Object Detection Cam free?

    Yes, Object Detection Cam is completely free and it doesn't have any in-app purchases or subscriptions.

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  • How much does Object Detection Cam cost?

    Object Detection Cam is free.

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App Info

Category
Photo Video
Publisher
Heng Jia Liang
Languages
English
Recent release
1.1 (5 months ago )
Released on
May 20, 2022 (3 years ago )
Last Updated
5 months ago
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