Excuber ' Product introduction.

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Presentation transcript:

Excuber ' Product introduction

Agenda What is Excuber? Excuber modules Sample Excuber implementation use-cases

What is Excuber? Excuber is a system for automatic image processing using its modules which can significantly reduce decision making process for the end-users Simplicity of the manipulation as well as precision of the detection are the key advantages of the system Excuber can be fully customised based on client requirements Excuber modules: Face detection & recognition Object detection Color detection Movement detection Anomaly detection License plate detection [EU & US] Data coupling from multiple modules Strong analytics “Excuber will allow you to process data from hundred’s of cameras in the blink of an eye”

Excuber - Technical Components Example: Wanted faces database 01 Excuber continuously identifies faces from a live camera Stolen cars license plates Any other unstructured data source Other data EXCUBER 02 Identified faces are continuously compared with face recognition database Object detection Face detection & recognition License plate recognition Age & Gender estimation Movement detection Rules Notifications 03 Sample rule: In case that a face is matched with more than 95% probability in 10 consequent frames Actions 04 Excuber will raise an alert with priority 1 05 After confirmation operator will take an action

Excuber - Functional Components Action 03 Operator will take the action based on notifications Action Filtering of false positive data Comparing results with configured rules Strong analytics 02 processing of the data across THE whole system Data coupling from multiple modules Trigger notifications 01 Image processing modules Modules are processing data coming from the live cameras, video files from archive or solo images Face detection & recognition Object detection Color detection Movement detection Anomaly detection License plate detection

Excuber - Detailed Functionality Description Data entry into the system: Using mobile application or via classic PC it is possible to view live original live stream, processed live stream, receive notifications as well as search thru historical data Excuber is able to process live video feed via RTMP protocol, images send via Wifi network or videos & images stored in archive Additional data representation could be implemented (for example): view all notification on the map Image processing modules: locate where a specific person was seen for the last time Face detection & recognition show all the notifications with certain priority in selected time range Object detection Color detection Movement detection Rules:  Anomaly detection License plate detection [EU & US] It is possible to define rules based on which application will trigger notifications Processing of other data: Rules could use data from modules or any other unstructured data loaded into the system Regular feeds of unstructured data from other databases could be established Notification:  New data sources can be easily implemented based on client requirements Notifications can be send to the mobile application or in standard formats as SMS, MMS or email. Application usage by operator:

Excuber Modules

Face Detection and Recognition Face detection and recognition - examples Module processes each frame from live video feed or archive video file Multiple faces can be recognised on each frame Each detected face is represented by the green square System could detect face rotated +/- 50 degrees horizontally and +/- 40 degrees vertically After a successful face detection system processes each face separately and could perform: Age and Gender estimation Compare the face with a database and provide a matching factor Continuously monitor face movement across the frame of the camera as well as thru multiple cameras connected to the system Precision of the face recognition module can be configured Face detection algorithm can be trained for specific applications Age and Gender estimation algorithm could be trained to improve estimation precision

Movement Detection Movement detection - examples Module processes each frame from live video feed or archive video file Movement in the frames can be detected using self learning algorithm Minimal and maximal size of detected objects could be configured Object as small as 10 pixels could be detected Filtering of false positive detections is available

Object and Colour Detection Object and colour detection - examples Module processes each frame from live video feed or archive video file Object recognition in each frame uses templates defined in advanced Multiple objects can be detected in one frame Template training for new objects is available For each detected object colour recognition can be applied in order to detect dominant colour Example: detect all humans in the picture and identify those which are wearing reflex vest

License Plate Detection License plate detection - examples Module processes each frame from live video feed or archive video file Module can detect multiple license plates in one frame Recommended maximum tilt of the plate is 30 degrees (module could go beyond that) All European and US license plates are supported

Data Coupling from Multiple Modules Data coupling from multiple modules - examples Excuber can combine data from multiple modules from live video feeds or archive video files together This could be used to generate output video or combine data for very sophisticated rules and notifications Examples of very sophisticated rules Confirm if the specific car is driven by the same driver Confirm if a colour of clothes of the specific person is the same Which car was driven by selected person and so on …

Sample System Use-cases Excuber is well suited for: Detection of unwanted people Monitoring of public gathering Securing and monitoring of buildings Monitoring of entrances Car detection Analysis of non standard behaviour in crowds Deep analytics for retail sector “Excuber’s implementation possibilities are endless”

Contacts Marián Andraščík MANIPUL, s.r.o. Manipul Letecká 11 andrascik@manipul.sk MANIPUL, s.r.o. Letecká 11 SK-831 03 Bratislava http://www.manipul.sk/ Excuber Slovakia http://excuber.eu/ Jozef Baláž Excuber jozef.balaz@excuber.eu +421 903 25 1234