Integration and Performance Analysis of Artificial Intelligence and
Computer Vision Based on Deep Learning Algorithms
- URL: http://arxiv.org/abs/2312.12872v1
- Date: Wed, 20 Dec 2023 09:37:06 GMT
- Title: Integration and Performance Analysis of Artificial Intelligence and
Computer Vision Based on Deep Learning Algorithms
- Authors: Bo Liu, Liqiang Yu, Chang Che, Qunwei Lin, Hao Hu, Xinyu Zhao
- Abstract summary: This paper focuses on the analysis of the application effectiveness of the integration of deep learning and computer vision technologies.
Deep learning achieves a historic breakthrough by constructing hierarchical neural networks, enabling end-to-end feature learning and semantic understanding of images.
The successful experiences in the field of computer vision provide strong support for training deep learning algorithms.
- Score: 5.734290974917728
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper focuses on the analysis of the application effectiveness of the
integration of deep learning and computer vision technologies. Deep learning
achieves a historic breakthrough by constructing hierarchical neural networks,
enabling end-to-end feature learning and semantic understanding of images. The
successful experiences in the field of computer vision provide strong support
for training deep learning algorithms. The tight integration of these two
fields has given rise to a new generation of advanced computer vision systems,
significantly surpassing traditional methods in tasks such as machine vision
image classification and object detection. In this paper, typical image
classification cases are combined to analyze the superior performance of deep
neural network models while also pointing out their limitations in
generalization and interpretability, proposing directions for future
improvements. Overall, the efficient integration and development trend of deep
learning with massive visual data will continue to drive technological
breakthroughs and application expansion in the field of computer vision, making
it possible to build truly intelligent machine vision systems. This deepening
fusion paradigm will powerfully promote unprecedented tasks and functions in
computer vision, providing stronger development momentum for related
disciplines and industries.
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