AI-POWERED FALL DETECTION: INNOVATIONS IN ELDERLY CARE WITH WEARABLE INERTIAL SENSORS AND PRE-IMPACT DETECTION

Authors

  • Chakka Balasruthi, Dr A Yashwanth Reddy, Srinivas Nayini

Keywords:

Fall Sense, Machine learning, Low false alarm rates, Health risk mitigation.

Abstract

The foundation of human society, agriculture provides life and drives many different businesses. Growing global populations and changing climatic patterns make creative approaches to maximize agricultural output ever more necessary. Using technology, precision farming is a lighthouse, simplifying processes, cutting waste of resources, and increasing yields. Especially in crops like hops, advanced crop categorization offers a possible paradigm change in this field. Conventional farming mostly depended on hand work and simple instruments. Considering elements like leaf form, color, and other fruiting characteristics, crop classification sometimes depended on visual evaluations by experienced farmers. Although this approach was time-intensive, prone to human error, and unfit for large-scale farming, it was rather effective to some degree. More complex approaches have been progressively opened by technological advancements. In precision agriculture, advanced hops classification is motivated by numerous important aspects. One of the main consumers of hops, the brewing business needs certain kinds with different taste and scent. Correct categorization guarantees the growth of hops satisfying these criteria. Accurate crop management is also vital, best matching sustainability objectives with the use of water, fertilizers, and pest control. Improved crop categorization also results in better yields and better market prices, therefore strengthening farmers' financial situation. Developing a sophisticated hops categorization system presents the current difficulty. Using state-of-the-art technology and machine learning and computer vision to precisely distinguish between many hop species, this system would The objective is to ensure that obtained hops match the stringent quality criteria of the brewing sector and permit careful crop management techniques. In modern farming, hops categorization marks a historic change. Modern technologies—especially computer vision and machine learning algorithms—allow for full study of finely detailed photographs of hop plants. These algorithms are taught on large-scale data and proficient at identifying minute variations that would slip the human sight. By means of this approach, the system develops to be somewhat accurate in categorizing several hop kinds. The result is a more accurate and efficient system for hop crop management, therefore producing better harvests for the brewing sector. For farmers, this innovative strategy not only increases resource efficiency and yields but also guarantees a consistent, premium supply chain for the brewing industry.

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