Journal of Interdisciplinary Research and Sustainability https://jirs.lpmpp.unila.ac.id/index.php/journal <p><strong>Journal of Interdisciplinary Research and Sustainability (JIRS) </strong></p> <p>First Published in December 2025</p> <p> </p> <p><strong>Journal of Interdisciplinary Research and Sustainability (JIRS)</strong> is an independent, peer-reviewed journal that publishes original research papers, review articles, community service reports, and investigative portfolios. The journal also welcomes brief communications on innovative approaches that contribute to interdisciplinary knowledge and sustainable development.</p> <p>JIRS covers a wide range of disciplines that intersect with sustainability, including but not limited to science, technology, engineering, environmental studies, social sciences, education, economics, medicine, and policy studies. The journal particularly encourages research that integrates multiple disciplines to address complex global challenges related to sustainability.</p> <p>JIRS follows an "<strong>as you go</strong>" publication model, where articles are published online immediately after completing the peer-review and editing process. In addition, the journal releases three main issues per year, in<strong> April, August, and Desember.</strong></p> en-US jirs.research@kpa.unila.ac.id (Abdurrahman) marshandatyas@gmail.com (Marsanda Nur Wahyuningtyas) Tue, 30 Dec 2025 11:27:45 +0000 OJS 3.2.0.3 http://blogs.law.harvard.edu/tech/rss 60 CONNECTING YOLO OBJECT DETECTION MODELS WITH FABRIC PATTERN IDENTIFICATION: A COMPREHENSIVE LITERATURE REVIEW https://jirs.lpmpp.unila.ac.id/index.php/journal/article/view/5 <p>Automated fabric pattern and defect detection has become essential for quality assurance due to the scale and diversity of fabric production. While the YOLO family of detectors dominates real-time vision tasks, evidence comparing the latest generations for the specific fabric challenges of fine-grained patterns, subtle defects, repetitive textures, and domain shifts remains fragmented. This review synthesizes knowledge on the use of YOLOv8, YOLOv10, and YOLOv11 for detecting patterns and defects in fabrics. The goal is to describe the advantages of each model, its ease of use, and how best to employ it. We followed a standard protocol (PRISMA) and searched for studies from the last ten years in major research databases such as Scopus, IEEE Xplore, Web of Science, and ScienceDirect. We used custom rules to determine which studies to include, then assessed their quality and summarized the findings. We analyzed reported metrics (mAP, precision/recall, F1, latency), datasets and annotation practices, augmentation, and training strategies. Among the included studies, YOLOv8 remains the most frequently adopted baseline in fabric, with strong accuracy, broad community support, and versatile variants for edge and server deployments. Emerging evidence suggests that YOLOv10 and YOLOv11 provide incremental accuracy improvements and better efficiency, especially when leveraging lightweight heads, improved label assignment, and optimized training schedules. Nano variants are generally preferred for edge devices, while medium/large variants are suitable for server-side inspection pipelines. Techniques such as multi-scale augmentation and mosaicking, copy-paste, and domain-focused data curation consistently improve recall for small and low-contrast defects. Several issues remain, such as uneven class distribution, limited public fabric datasets, unreliable latency reports, and broad application across different fabric types and lighting conditions. Ultimately, the choice of YOLOv8, YOLOv10, or YOLOv11 should be based on application limitations and desired precision, along with clear, standardized assessments and reports to support relative claims and lead to acceptance in the field.</p> Rico Andrian, Auvar Mahsa Fahlevi, Adli Fiqrullah Copyright (c) 2025 Rico Andrian, Auvar Mahsa Fahlevi, Adli Fiqrullah https://jirs.lpmpp.unila.ac.id/index.php/journal/article/view/5 Tue, 30 Dec 2025 00:00:00 +0000 FACTORS AFFECTING LAW ENFORCEMENT ON COPYRIGHT CRIMES ON ILLEGAL MOVIE STREAMING SITES https://jirs.lpmpp.unila.ac.id/index.php/journal/article/view/6 <table width="671"> <tbody> <tr> <td width="476"> <p><em>Copyright is the exclusive right of creators over their intellectual works in the fields of science, art, and literature. In the digital era, works such as films can be accessed through both legal and illegal sites. This illegal access constitutes a form of copyright infringement that poses serious challenges to law enforcement. Obstacles to law enforcement against crimes perpetrated by illegal film streaming sites include five main factors: weak legal substance, limited law enforcement officers, lack of facilities and infrastructure, low public legal awareness, and a permissive culture toward digital violations. Of these five factors, societal factors are the most dominant obstacle, particularly related to low legal awareness and high tolerance for access to illegal content. Therefore, the effectiveness of law enforcement depends heavily on the success of establishing a rule-abiding legal culture at the community level. Regulatory reforms and capacity building of law enforcement officers are still necessary, but changing public mindsets and behaviors is key to creating a just and effective law enforcement system.</em></p> </td> </tr> </tbody> </table> Alda Anggraini, Deni Achmad, Muhammad Farid Copyright (c) 2025 Journal of Interdisciplinary Research and Sustainability https://jirs.lpmpp.unila.ac.id/index.php/journal/article/view/6 Tue, 30 Dec 2025 00:00:00 +0000