With the rapid development of artificial intelligence technology, image recognition technology has become a very important research direction in the field of artificial intelligence. As a widely used programming language, PHP can also be used to implement image recognition technology. This article will introduce the research on real-time image recognition technology in PHP from both theoretical and practical aspects.
1. Introduction to image recognition technology
Image recognition technology, also known as computer vision technology, refers to the technology that uses computers to analyze and identify an image. It is an important technical direction in the field of artificial intelligence and has very broad application prospects. At present, image recognition technology has been widely used in areas such as face recognition, license plate recognition, object recognition, and image search.
2. Basic principles of PHP implementing image recognition technology
PHP can use image recognition technology based on deep learning to implement image recognition functions. Image recognition technology based on deep learning is an image recognition method based on neural network models. Specifically, it uses a convolutional neural network (CNN) as a feature extractor and then utilizes a fully connected layer for classification. Convolutional neural network is a deep learning network that can extract features from input images through convolution operations.
A deep learning model that combines a convolutional neural network and a fully connected layer is called a convolutional neural network model. When implementing image recognition functions, we can use pre-trained convolutional neural network models to convert images into feature vectors. Then, machine learning algorithms are used to classify these feature vectors to achieve image recognition.
3. The process of realizing real-time image recognition
The following is an introduction to the basic process of using PHP to realize real-time image recognition technology:
In the above process, the two key steps are converting the image into a format that can be processed by the convolutional neural network model and using a machine learning algorithm to classify the feature vectors. These steps need to be implemented using relevant PHP image processing libraries and machine learning libraries.
4. Introduction to related PHP libraries
PHP image processing library can help us convert images into images that can be convolved The format for neural network model processing. Commonly used image processing libraries in PHP include GD, Imagick, Gmagick, etc. Among them, the GD library is one of the most commonly used image processing libraries in PHP, supporting images in JPG, GIF, PNG and other formats. Imagick and Gmagick are also commonly used image processing libraries. They support more image formats and more image processing functions.
PHP Machine Learning Library can help us implement machine learning algorithms. Commonly used machine learning libraries in PHP include PHP-ML, DL-PHP, K-iwi, etc. Among them, the PHP-ML library is one of the most commonly used machine learning libraries in PHP and supports a variety of machine learning algorithms, including classification, regression, clustering, etc.
5. Practice: Use PHP to implement real-time image recognition
Let’s use PHP to implement a simple real-time image recognition function. We first need to download a pre-trained convolutional neural network model, and then use this model to implement the image recognition function.
We can download a pre-trained convolutional neural network model from GitHub, which is based on Keras and trained with TensorFlow. We can use PHP’s TensorFlow library to call this model.
We use PHP's TensorFlow library to call the pre-trained convolutional neural network model. The specific code is as follows:
// 载入TensorFlow库 $loader = new TensorFlowAutoloader(); $loader->register(); // 载入模型 $model = TensorFlowSavedModel::load($modelPath, ['serve']); // 载入图像,使用GD库将图像转换为数组格式 $image = imagecreatefromjpeg($imagePath); $image = imagecreatetruecolor(224, 224); imagecopyresampled($image, $input, 0, 0, 0, 0, 224, 224, imagesx($input), imagesy($input)); $pixels = []; for ($y = 0; $y < 224; ++$y) { for ($x = 0; $x < 224; ++$x) { $color = imagecolorat($image, $x, $y); $r = ($color >> 16) & 0xFF; $g = ($color >> 8) & 0xFF; $b = $color & 0xFF; $pixels[] = ($r + $g + $b) / 3.0 / 255.0; } } $inputTensor = new TensorFlowTensor([array_chunk($pixels, 224)]); // 运行模型 $outputTensor = $model->predict(['input' => $inputTensor]); // 输出结果 $result = $outputTensor->value()->data()->toArray();
In the above code, we convert the image into array format using the GD library, then pass the image in array format to the convolutional neural network model for prediction, and finally output the prediction result.
6. Summary
This article introduces the basic principles and implementation process of real-time image recognition technology in PHP, and introduces the relevant PHP image processing library and machine learning library. Through practice, we learned how to use PHP to implement a simple real-time image recognition function, which is of great practical value to PHP developers.
The above is the detailed content of Research on real-time image recognition technology using PHP. For more information, please follow other related articles on the PHP Chinese website!