Iphone Fake Computer Vision Project

disha

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Classes (8)
iphone_fake
iphone_fake_back_camera
iphone_fake_back_lens
iphone_fake_back_lense
iphone_fake_camera
iphone_fake_front_camera
iphone_fake_front_lense
iphone_fake_lens

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Description

Here are a few use cases for this project:

  1. Counterfeit iPhone Detection: The model could be used by electronic product retailers or second-hand electronic dealers to identify counterfeit iPhones based on the discrepancies in camera/lens features as compared to genuine products.

  2. Smartphone Authentication: Cybersecurity companies or software developers could integrate this model into their security systems or applications. It would help in verifying the authenticity of a device during transactions or confidential communications.

  3. E-commerce Monitoring: The model could assist e-commerce platforms in automatically filtering out fake iPhone listings, thereby increasing customer trust and reducing the risk of fraud.

  4. Law Enforcement: Customs or law enforcement agencies could use the model to detect smuggled counterfeit iPhones at ports, borders or in raids, assisting in the fight against counterfeit goods.

  5. Consumer Awareness: Consumer protection agencies or tech savvy bloggers could use the model to educate the general public on how to differentiate counterfeit iPhones from genuine ones, raising awareness against counterfeit goods.

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Cite This Project

LICENSE
CC BY 4.0

If you use this dataset in a research paper, please cite it using the following BibTeX:

                        @misc{
                            iphone-fake-5w4mh_dataset,
                            title = { Iphone Fake Dataset },
                            type = { Open Source Dataset },
                            author = { disha },
                            howpublished = { \url{ https://universe.roboflow.com/disha-f5gnx/iphone-fake-5w4mh } },
                            url = { https://universe.roboflow.com/disha-f5gnx/iphone-fake-5w4mh },
                            journal = { Roboflow Universe },
                            publisher = { Roboflow },
                            year = { 2024 },
                            month = { nov },
                            note = { visited on 2024-12-19 },
                            }