Exploring the Evolution of GenAI in Music Composition

Lakshmi Priya K, Anuj M, Harshid P, Muhammed Jasbin K
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Abstract

Crafting musical compositions presents a unique set of challenges, divergent from those encountered in visual art forms. The temporal nature of music necessitates models proficient in handling time dynamics. Moreover, compositions often encompass multiple tracks, each characterized by its own temporal intricacies, demanding an intricate approach to their interdependent evolution. Unlike static visual imagery, musical notes are sequenced, commonly organized into chords or melodies, imposing a requirement for specialized chronological structures. This paper extensively delves into the evolutionary journey of GenAI within the domain of sequential generative adversarial networks (GANs) tailored specifically for music composition. We introduce a suite of novel models meticulously crafted to address the nuances of musical generation, exploring their efficacy in producing complex multi-track compositions. Our investigation centers on a comprehensive analysis of the evolutionary trajectory of these models, scrutinizing their capacity to autonomously generate cohesive musical sequences across diverse tracks. Through rigorous empirical evaluations, we substantiate the capabilities of our models to produce compelling musical segments sans human intervention. Furthermore, we delve into intricate technical discussions, elucidating the underlying mechanisms driving the generation process, including the intricate interplay of neural architectures and training methodologies. In addition to empirical validation, we conduct detailed user studies, garnering insights into the subjective perception of the generated compositions. Moreover, we delve into the realm of human-AI collaboration in music generation, unveiling the potential of GenAI to complement human compositions by seamlessly providing harmonious accompaniment, thereby bridging the gap between artistic creativity and computational progress.
探索 GenAI 在音乐创作中的演变
音乐创作面临着一系列独特的挑战,与视觉艺术形式不同。音乐的时间性要求模型能够熟练处理时间动态。此外,音乐作品通常包含多个音轨,每个音轨都有自己错综复杂的时间特征,这就要求采用复杂的方法来处理它们相互依存的演变过程。与静态视觉图像不同,音符是有顺序的,通常组织成和弦或旋律,这就对专门的时序结构提出了要求。本文深入探讨了 GenAI 在专为音乐创作定制的序列生成对抗网络(GAN)领域的进化历程。我们介绍了一套精心设计的新型模型,以解决音乐生成的细微差别,探索它们在制作复杂的多轨作品时的功效。我们的研究重点是全面分析这些模型的进化轨迹,仔细研究它们在不同轨道上自主生成连贯音乐序列的能力。通过严格的实证评估,我们证实了我们的模型在没有人工干预的情况下生成引人注目的音乐片段的能力。此外,我们还深入探讨了复杂的技术问题,阐明了驱动生成过程的基本机制,包括神经架构和训练方法之间错综复杂的相互作用。除了经验验证外,我们还进行了详细的用户研究,深入了解用户对生成作品的主观感受。此外,我们还深入研究了人类与人工智能在音乐生成方面的合作,揭示了 GenAI 通过无缝提供和谐伴奏来补充人类作品的潜力,从而弥合了艺术创造力与计算进步之间的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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