Due to the massive explanation of artificial intelligence, machine learning technology is being used in various areas of our day-to-day life. In the world, there are a lot of scenarios where a simple crime can be prevented before it may even happen or find the person responsible for it. A face is one distinctive feature that we have and can differentiate easily among many other species. But not just different species, it also plays a significant role in determining someone from the same species as us, humans. Regarding this critical feature, a single problem occurs most often nowadays. When the camera is pointed, it cannot detect a person's face, and it becomes a poor image. On the other hand, where there was a robbery and a security camera installed, the robber's identity is almost indistinguishable due to the low-quality camera. But just making an excellent algorithm to work and detecting a face reduces the cost of hardware, and it doesn't cost that much to focus on that area. Facial recognition, widget control, and such can be done by detecting the face correctly. This study aims to create and enhance a machine learning model that correctly recognizes faces. Total 627 Data have been collected from different Bangladeshi people's faces on four angels. In this work, CNN, Harr Cascade, Cascaded CNN, Deep CNN & MTCNN are these five machine learning approaches implemented to get the best accuracy of our dataset. After creating and running the model, Multi-Task Convolutional Neural Network (MTCNN) achieved 96.2% best model accuracy with training data rather than other machine learning models.
翻译:由于人工智能的大规模解释,机器学习技术正在我们日常生活的各个领域中被大量使用。在世界上,有很多情景可以防止简单的犯罪,而这种犯罪甚至可能发生或找到对此负责的人。一个面孔是我们拥有的一个独特特征,并且可以很容易地区分许多其他物种。但不仅仅是不同的物种,它在确定与我们人类相同物种的人方面也起着重要作用。关于这个关键特征,一个单一的问题现在经常发生。当相机被指向时,它无法探测一个人的面部,它变成一个糟糕的图像。另一方面,在有抢劫和安全摄像头被安装之前,一个简单的犯罪是可以预防的。由于低质量的摄像头,抢劫者的身份几乎是不可分化的。但是,只要做一个极好的算法来计算和探测一个脸孔就可以降低硬件的成本。关于这个关键特征,模型的识别、构件控制,以及这样的问题可以通过正确探测面部来完成。本研究的目的是创建和加强一个机器学习模型,而这个机器的准确的准确性摄像头,由于低质量的摄像头,所以抢劫者的身份特征几乎无法辨别。 627 机的卡路路路路路路路路路面数据已经被采用。