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An Improved Particle Swarm Optimization-Powered Adaptive Classification and Migration Visualization for Music Style

机译:一种改进的粒子群优化供电的自适应分类和音乐风格的迁移可视化

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Based on the adaptive particle swarm algorithm and error backpropagation neural network, this paper proposes methods for different styles of music classification and migration visualization. This method has the advantages of simple structure, mature algorithm, and accurate optimization. It can find better network weights and thresholds so that particles can jump out of the local optimal solutions previously searched and search in a larger space. The global search uses the gradient method to accelerate the optimization and control the real-time generation effect of the music style transfer, thereby improving the learning performance and convergence performance of the entire network, ultimately improving the recognition rate of the entire system, and visualizing the musical perception. This kind of real-time information visualization is an artistic expression form, in which artificial intelligence imitates human synesthesia, and it is also a kind of performance art. Combining traditional music visualization and image style transfer adds specific content expression to music visualization and time sequence expression to image style transfer. This visual effect can help users generate unique and personalized portraits with music; it can also be widely used by artists to express the relationship between music and vision. The simulation results show that the method has better classification performance and has certain practical significance and reference value.
机译:基于自适应粒子群算法和错误反向化神经网络,本文提出了针对不同风格的音乐分类和迁移可视化方法的方法。该方法具有结构简单,算法成熟,精确优化的优点。它可以找到更好的网络权重和阈值,使得粒子可以从先前搜索的本地最佳解决方案中跳出,并在更大的空间中搜索。全球搜索使用梯度方法来加速优化和控制音乐风格传输的实时发电效果,从而提高整个网络的学习性能和收敛性能,最终提高整个系统的识别率和可视化音乐感知。这种实时信息可视化是一种艺术表达形式,其中人工智能仿死人类奇异,并且它也是一种性能艺术。结合传统的音乐可视化和图像样式传输将特定的内容表达式添加到音乐可视化和时间序列表达式到图像样式传输。这种视觉效果可以帮助用户通过音乐生成独特和个性化的肖像;它也可以被艺术家广泛使用,以表达音乐与愿景之间的关系。仿真结果表明,该方法具有更好的分类性能,具有一定的实际意义和参考价值。

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