Closing the Gap on Addiction Recovery Engagement with an AI-infused Convolutional Neural Network Technology Application—A Design Vision

Benjamin Jacob, Heather McDonald, Joe Bohn
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Abstract

Currently, real-time detection networks elaborate the technical details of the Faster Regional Convolution Neural Network (R-CNN) recognition pipeline. Within existing R-CNN literature, the evolution exhibited by R-CNN is most profound in terms of computational efficiency integrating each training stage to reduce test time and improvement in mean average precision (mAP), which can be infused into an artificially intelligent (AI), machine learning (ML), real-time, interactive, recovery capital application (app). This article introduces a Region Proposal Network (RPN) that shares full-image convolutional features with a real-time detection AI-ML infused network in an interactive, continuously self-learning wrist-wearable real-time recovery capital app for enabling cost-free region proposals (e.g., instantaneous body physiological responses, mapped connections to emergency services, sponsor, counselor, peer support, links to local and specific recovery capital assets, etc.). A fully merged RPN and Faster R-CNN deep convolutional unified network in the app can simultaneously train to aggregate and predict object bounds and objectness scores for implementing recovery capital real-time solutions (e.g., baseball card scoring dashboards, token-based incentive programs, etc.) A continuous training scheme alternates between fine-tuning RPN tasks (e.g., logging and updating personal client information, gamification orientation) and fine-tuning the detection (e.g., real-time biometric monitoring client’s behavior for self-awareness of when to connect with an addiction specialist or family member, quick response (QR) code registration for a 12-step program, advanced security encryption, etc.) in the interactive app. The very deep VGG-16 model detection system has a frame rate of 5fps within a graphic processing unit (GPU) while accomplishing sophisticated object detection accuracy on PASCAL Visual Object Classification Challenge (PASCAL VOC) and Microsoft Common Objects in Context (MS COCO) datasets. This is achieved with only 300 proposals per real-time retrieved data capture point, information bit or image. The app has real-time, infused cartographic and statistical tracking tools to generate Python Codes, which can enable a gamified addiction recovery-oriented digital conscience. Faster R-CNN and RPN can be the foundations of an interactive real-time recovery capital app that can be adaptable to multiple recovery pathways based on participant recovery plans and actions. This paper discusses some of the critical attributes and features to include in the design of a future app to support and close current gaps in needed recovery capital to help those who are dealing with many different forms of addiction recovery.
利用注入人工智能的卷积神经网络技术应用缩小参与戒毒康复的差距--设计愿景
目前,实时检测网络详细阐述了更快区域卷积神经网络(R-CNN)识别管道的技术细节。在现有的 R-CNN 文献中,R-CNN 的演进最深刻的体现在计算效率方面,它整合了每个训练阶段以减少测试时间,并提高了平均精度(mAP),可将其注入人工智能(AI)、机器学习(ML)、实时、交互式恢复资本应用(app)中。本文介绍了一个区域建议网络(RPN),该网络与实时检测人工智能-机器学习注入网络共享全图像卷积特征,可用于交互式、持续自我学习的腕戴式实时康复资本应用程序,以实现无成本的区域建议(例如,即时身体生理反应、与紧急服务、赞助人、顾问、同伴支持的映射连接、与本地和特定康复资本资产的链接等)。应用程序中完全合并的 RPN 和 Faster R-CNN 深度卷积统一网络可以同时进行训练,以汇总和预测对象边界和对象度分数,从而实施恢复资本实时解决方案(例如,棒球卡评分仪表板、基于代币的激励计划等)、例如,记录和更新个人客户信息、游戏化导向)和微调交互式应用程序中的检测(例如,实时生物识别监控客户行为,以自我感知何时与成瘾专家或家庭成员联系、快速反应(QR)代码注册 12 步计划、高级安全加密等)。深度 VGG-16 模型检测系统在图形处理器(GPU)中的帧速率为 5fps,同时在 PASCAL 视觉对象分类挑战赛(PASCAL VOC)和微软上下文中的常见对象(MS COCO)数据集上实现了复杂的对象检测精度。每个实时检索的数据捕获点、信息位或图像仅需 300 个建议即可实现这一目标。该应用程序具有实时、注入式制图和统计跟踪工具,可生成 Python 代码,从而实现以游戏化戒毒为导向的数字良知。更快的 R-CNN 和 RPN 可以成为交互式实时戒毒资本应用程序的基础,该应用程序可以根据参与者的戒毒计划和行动适应多种戒毒途径。本文讨论了未来应用程序设计中应包含的一些关键属性和功能,以支持和弥补当前在所需恢复资本方面的差距,帮助那些正在面对多种不同形式的毒瘾恢复的人们。
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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