Home Technology peripherals AI Understand human behavior recognition, its algorithms and applications

Understand human behavior recognition, its algorithms and applications

Jan 23, 2024 pm 03:45 PM
AI machine learning

什么是人类行为识别 人类行为识别算法和应用

Human behavior recognition is an important technology that uses computer vision technology to analyze and identify human behavior. It is widely used in smart monitoring, smart home, smart transportation and other fields to provide people with convenience and safety.

The core technologies of human behavior recognition include image processing, pattern recognition and machine learning. First, image or video data is acquired through a camera or other sensor. Then, these data are preprocessed, including denoising, image enhancement, image segmentation and other operations, in order to better extract features. Then, the feature extraction algorithm is used to extract the human body contours, movements and other information in the image, and convert it into a digital form that the computer can understand. Finally, these digital data are classified and identified through machine learning algorithms to achieve automatic recognition of human behavior.

With the development of artificial intelligence technology, human behavior recognition algorithms continue to mature and improve. These algorithms include methods based on deep learning, feature extraction, models, and hybrid models. By combining different algorithms, we can improve the accuracy and efficiency of behavior recognition.

Human behavior recognition algorithm is a technology that automatically recognizes human behavior by analyzing human body movements, postures and other characteristics. In order to improve recognition accuracy and efficiency, different algorithms can be selected in different application scenarios. Below are some common human behavior recognition algorithms.

1. Human behavior recognition algorithm based on deep learning

Deep learning is one of the most widely used human behavior recognition algorithms at present. It processes and learns input data through multi-layer neural networks to achieve automatic recognition of human behavior. Among them, convolutional neural network (CNN) and recurrent neural network (RNN) are commonly used deep learning models. In human behavior recognition, CNN is mainly used to extract spatial features of image and video data, while RNN is used to process temporal features of time series data. These features are combined and learned through multi-layer neural networks to ultimately achieve automatic recognition of human behavior.

2. Human behavior recognition algorithm based on feature extraction

Feature extraction is an important technology in human behavior recognition. It converts human body contours, joint points, colors and other information into digital forms that computers can understand by preprocessing and feature extraction of image and video data. Commonly used feature extraction algorithms include histogram of oriented gradients (HOG), local binary pattern (LBP), human posture estimation, etc. These feature extraction algorithms can effectively improve recognition accuracy and efficiency, and can be used in combination with other classification algorithms.

3. Model-based human behavior recognition algorithm

Model is another commonly used algorithm in human behavior recognition. It classifies and identifies input data by building mathematical models of human behavior. Commonly used models include support vector machines (SVM), hidden Markov models (HMM), decision trees, etc. These models can build the ability to understand and recognize human behavior through learning and training on training data. Then, for new input data, automatic recognition of human behavior is achieved through the classification and judgment of the model.

4. Human behavior recognition algorithm based on hybrid model

The hybrid model is an algorithm that combines multiple single models. In human behavior recognition, hybrid models can combine multiple classification algorithms to improve the accuracy and robustness of recognition. For example, you can combine deep learning models and model algorithms, use the deep learning model to extract spatial features, and then hand over the time series features to the model algorithm for processing and classification. In this way, the advantages of different algorithms can be fully utilized to improve the effect of human behavior recognition.

Currently, human behavior recognition has been widely used in many fields. In the field of intelligent surveillance, through behavioral recognition of surveillance videos, automatic alarms, personnel tracking, anomaly detection and other functions can be realized, enhancing the intelligence and practicality of the surveillance system. In the field of smart homes, through behavioral recognition of family members, functions such as smart lighting and smart environment control can be realized, making the home more intelligent and humane. In the field of intelligent transportation, through behavioral recognition of pedestrians and vehicles, functions such as intelligent traffic lights and intelligent traffic management can be realized to improve traffic efficiency and safety.

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