Music holds a crucial place in our daily lives, uplifting our spirits and contributing to our overall well-being. However, not all musical genres are suitable for every emotional state, and the vast digital music repositories make it challenging to pinpoint the perfect tune for a specific mood. With the ever-expanding song options, individuals often face confusion when selecting tracks. To address this, a context-aware music recommendation system is introduced, designed to recognize users' current emotions and suggest music that aligns with those feelings. This system takes a comprehensive approach, integrating both context and emotion elements to enhance user preference prediction. The overarching goal is to simplify the music selection process, providing users with a more seamless, intuitive, and enjoyable listening experience. The forthcoming evaluation will delve into performance metrics and research findings, contributing to the ongoing refinement and optimization of this context-sensitive music recommendation strategy. Keywords: Emotion Detection, CNN(Convolutional Neural Network),Video and audio music recommendation