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Determine best approach for detecting and segmenting TVs/Screens

€8-30 EUR

종료됨
게시됨 5년 이상 전

€8-30 EUR

제출할때 지불됩니다
I am working on a small project in which I am interested in providing users with some additional information about the program being displayed on TV (e.g. extra info about the cast of a movie, show schedules, etc.) My first task is to, based on a recording of the TV/Screen made with a smart phone, detect the screen and segment it (to later feed a classifier with the frames of the TV show). I need help on this task. I know there are algorithms like Mask R-CNN that can segment some things like people/cars/etc. but I need a custom model to do so JUST for screens/TV/monitor. The solution can rely on deeplearning/basic image manipulation/whatever but the resulting precision should be high (see images attached). I am basically looking for advice on this task. Additional information: - The resolution of the image will be high (1080p) - The TV/Screen/monitor can be safely assume to ALWAYS be in the middle of the image (or, in other words, the central pixel will always belong to Screen/TV/monitor region) - As frames will be taken out of a video, results can be double-checked with other frames from the same video - Algorithm cannot rely on frames changing too much from one another (that is, do not assume the TV/screen/monitor can be detected by simply detecting WHAT has changed from one frame to the next or from the beginning of the video to the end).
프로젝트 ID: 17852371

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4 제안서
원격근무 프로젝트
활동 중 5년 전

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사용자 아바타
Hello, there, I am very happy to put my bid on your project. I am an expert of computer vision and senior software developer, so I am interested in and confident to do this project. I hope to discuss everything of the project in detail with you and work on this project with you. Regards.
€50 EUR 1일에
5.0 (45 건의 리뷰)
6.1
6.1
사용자 아바타
Quite interesting project! I have a few considerations: 1. we could* use pre-trained models like Mask R-CNN or YOLO that would be trained on custom dataset. 2. however, they are all trained on much smaller image dimensions like 256x256 3. HD is nice, but after some dimensions (like 256x256) 2x bigger dimension (X,Y) gains only a small percentages of accuracy but much more computing power (like 4x) (X*Y). 4. I would definitely keep images aspect ration since that is what can help distinguishing TV screen from other objects on image (cropping image) 5. assumption "The TV/Screen/monitor can be safely assume to ALWAYS be in the middle of the image" will greatly help since that would exclude recognition of picture on the wall as TV screen 6. (probably the most (important), we need big enough labeled dataset. Best, Vedran
€50 EUR 10일에
5.0 (2 건의 리뷰)
2.7
2.7
사용자 아바타
I’m excited to share with you the proposal ,  I am an expert in project you mentioned , Imagination and creativity can change the world . I guarantee you to submit the work within timeline and as per your expectations.  I understand your project very well and i will complete this work within 24 hours .  I have completed many similar projects before , so i hope you choose me to work with you.  I will help you untill you get fulfilled from my work. We’ll provide a level of service that is unbeaten and unmatched in quality and efficiency! Wind, rain, or shine, we’re here for you everyday 365 days of the year, 24 hours a day, 7 days a week.  I will fix your problem in the shortest amount of allotted time. We provide an unbeatable freelancing service experience and will work to solve every single one of your problem’s until you(our client), are completely satisfied. Chat with us for our previous works.  I'm genuinely eager to work with you on your current project.  I look forward to your response. Regards.
€29 EUR 1일에
0.0 (0 건의 리뷰)
0.0
0.0

고객에 대한 정보

국기 (SPAIN)
Murcia, Spain
0.0
0
결제 수단 확인
5월 17, 2016부터 회원입니다

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