ML Image Identifier

ML Image Identifier


Machine Learning Visualizer


₩1,100Best Deal Ever
1.5.0for iPhone, iPad and more
HullBreach Studios Ltd.
Developer
131.7MB
Size
Nov 11, 2020
Update Date
Photo & Video
Category
4+
Age Rating
Age Rating
4+
Apps in this category do not contain restricted content.
9+
Apps in this category may contain mild or occasional cartoon, fantasy or real-life violence, as well as occasional or mild adult, sexually suggestive or horrifying content and may not be suitable for children under 9 years of age.
12+
Apps in this category may contain occasional mild indecent language, frequent or intense cartoon or real-life violence, minor or occasional adult or sexually suggestive material, and simulated gambling, and may be for children under 12 years of age.
17+
You must be at least 17 years old to access this App.
Apps in this category may contain frequent and intense offensive language; Frequent and intense cartoon, fantasy or realistic violence: frequent and intense adult, scary and sexually suggestive subjects: as well as sexual content, nudity, tobacco, alcohol and drugs, may not be suitable for children under 17 years of age.
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About ML Image Identifier

FEATURES:

ML Image Identifier is an educational app that allows your iOS device to identify images in real-time, as you move the camera around your environment. It can scan for 3 categories of images ("Objects", "Cars", and "Food") and recognize "Text" (character boxes, OCR) and "People" (facial landmarks, upper bodies, facial segmentation, depth map).

The app automatically throttles the image processing to work on older devices.

For the categorized images, the app displays the top-5 predicted matches, based on the neural networks' confidence levels as percentages.

BACKGROUND:

Once merely a subject of science-fiction, machine learning has permeated our lives in recent decades. We see it in numerous uses, such as handwriting recognition, facial recognition, image tagging, AI in games, targeted advertisements, predictive typing, and many automated tasks. Social networks are free because the data you provide (e.g. posts, surveys, photos, etc.) can be valuable for numerous purposes, turning the users into the products to sell. In short: Knowledge is power.

With the release of iOS 11, Apple brought machine learning to the masses with CoreML, making it possible to run neural networks and other ML-related tools via hardware acceleration on any iOS device. Each subsequent iOS version added to the featureset.

This app is a demonstration of some possibilities - and some deficiencies - of machine learning. Modeling a neural network is only one part of the task. For a ML model to work, it must be fed massive amounts of test data, similarly to how it takes a living creature numerous stimuli to learn. Good test data can yield good results; poor test data can yield poor results. Sometimes, biases of those creating the tests can come into play, since they may unknowingly weigh certain test values over others.

SPECIFICS:

ML Image Identifier makes use of 3 ML models (all MIT- or Apache- licensed) and Apple's own Vision framework to serve as examples:

"MobileNet" - This scans general objects. It works fairly well with household items. It cannot identify people. This ML model is an example of fairly high-quality results in image recognition and is much more compact than similar ML models that can be as large as 500MB.

"CarRecognition" - This scans for makes and models of vehicles. It is very hit-or-miss and seems to heavily match automobiles from specific regions of the world. Most matches are the right body type but wrong make. This ML model is an example of mixed results in image recognition.

"Food101" - This scans for prepared foods. It rarely works with general food items and seems to focus on foods that most people will not have in their houses, such as caviar and lobster. It also returns many false-positives for desserts. This ML model is an example of poor results in image recognition when used outside of very specific cases.

The "Text" mode looks for all potential text in view and highlights the words and individual characters in those words for easy viewing. It displays the top 5 rows of text by descending height.

The "People" mode looks for all potential human or human-like faces. Of those found, the app highlights the facial landmarks, such as eyes, nose, jawline, etc. This mode in particular works better on a newer device at a usable framerate, due to the hardware required for real-time image processing. It also supports upper torso detection (back camera) and facial segmentation or depth map (front camera).
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최신 버전 1.5.0의 새로운 기능

Last updated on Nov 11, 2020
오래된 버전
Minor code and UI clean-ups
Informational tab
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Version History
1.5.0
Nov 11, 2020
Minor code and UI clean-ups
Informational tab
1.4.0
Nov 22, 2019
Front camera features:
iOS 12.2+: facial landmarks, depth map (TrueDepth camera)
iOS 13.0+: facial segments (TrueDepth camera)
1.3.5
Sep 25, 2019
* "People" mode replaces "Faces" mode
* Upper torso detection in "People" mode on iOS 13
1.3.0
Sep 24, 2019
* Support for dark mode
* Added optical character-recognition (OCR) in text-recognition mode
1.2.5
Jun 15, 2019

ML Image Identifier 가격

오늘:
₩1,100
최저 가격:
₩1,100
최고 가격:
₩1,500

ML Image Identifier FAQ

제한된 국가 또는 지역에서 ML Image Identifier를 다운로드하는 방법을 알아보려면 여기를 클릭하십시오.
ML Image Identifier의 최소 요구 사항을 보려면 다음 목록을 확인하십시오.
iPhone
iOS 13.0 이상 필요.
iPad
iPadOS 13.0 이상 필요.
iPod touch
iOS 13.0 이상 필요.
ML Image Identifier은 다음 언어를 지원합니다. 영어

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