Integrasi ESP32-CAM WROVER dan Radar LD2410C untuk Klasifikasi Manusia dan Hewan Berbasis Edge Impulse

Authors

  • Shalma Zopi Habibah Politeknik Negeri Padang
  • Yulindon Yulindon Politeknik Negeri Padang

DOI:

https://doi.org/10.61722/jipm.v4i3.2497

Keywords:

ESP32-CAM WROVER, LD2410C Radar, Edge Impulse, Human and Animal Classification, IoT

Abstract

This study aims to design and implement a human and animal classification system based on ESP32-CAM WROVER and LD2410C radar sensor, supported by Edge Impulse and integrated with the Telegram Bot API. The system operates in real-time, utilizing image data from the camera and presence data from the radar to improve classification accuracy. Data collection was conducted directly at the testing site to ensure the model adapts to real environmental conditions. The implementation results show that the integration of camera and radar successfully overcomes the limitations of camera-only systems, particularly under low-light conditions. Furthermore, the use of Telegram as a communication medium provides practical remote monitoring without additional applications. This system demonstrates strong potential for applications in smart homes, security, and wildlife monitoring with low cost and high flexibility.

 

References

AI-Thinker. (2017). ESP32-Cam Module. AI-Thinker Technology, 1–4.

Alfonso, I., Garcés, K., Castro, H., & Cabot, J. (2021). Self-adaptive architectures in IoT systems: a systematic literature review. Journal of Internet Services and Applications, 12(1). https://doi.org/10.1186/s13174-021-00145-8

Banbury, C., Reddi, V. J., Torelli, P., Holleman, J., Jeffries, N., Kiraly, C., Montino, P., Kanter, D., Ahmed, S., Pau, D., Thakker, U., Torrini, A., Warden, P., Cordaro, J., Di Guglielmo, G., Duarte, J., Gibellini, S., Parekh, V., Tran, H., … Xuesong, X. (2021). MLPerf Tiny Benchmark. Advances in Neural Information Processing Systems.

Chang, Y. H., Wu, F. C., & Lin, H. W. (2025). Design and Implementation of ESP32-Based Edge Computing for Object Detection. Sensors, 25(6). https://doi.org/10.3390/s25061656

Choudhary, A. (2024). Internet of Things: a comprehensive overview, architectures, applications, simulation tools, challenges and future directions. In Discover Internet of Things (Vol. 4, Issue 1). Springer International Publishing. https://doi.org/10.1007/s43926-024-00084-3

Firdaus, F., Wibowo, M., Tullah, R., & Ricesa, W. (2025). Studi Perbandingan Algoritma YOLO dan FOMO untuk Object Detection pada Perangkat ESP32-CAM. Insect (Informatics and Security): Jurnal Teknik Informatika, 11(1), 44–54. https://doi.org/10.33506/insect.v11i1.4289

Herwandi, A., Ramadhan, A. A., Sunggono, N. T., & Ferawati, F. (2025). Analisis Kinerja ESP32-CAM Dalam Mendeteksi Objek. Bit-Tech, 7(3), 1014–1021. https://doi.org/10.32877/bt.v7i3.2296

Hymel, S., Banbury, C., Situnayake, D., Elium, A., Ward, C., Kelcey, M., Baaijens, M., Majchrzycki, M., Plunkett, J., Tischler, D., Grande, A., Moreau, L., Maslov, D., Beavis, A., Jongboom, J., & Reddi, V. J. (2023). Edge Impulse: An MLOps Platform for Tiny Machine Learning. http://arxiv.org/abs/2212.03332

Kumar, S., Tiwari, P., & Zymbler, M. (2019). Internet of Things is a revolutionary approach for future technology enhancement: a review. Journal of Big Data, 6(1). https://doi.org/10.1186/s40537-019-0268-2

Kurniawan, S., Sani, A., & Budiana, B. (2025). Analisa penggunaan ESP32-Cam dan Platform Edge Lingkungan Industri. 06(03).

Lombardi, M., Pascale, F., & Santaniello, D. (2021). Internet of things: A general overview between architectures, protocols and applications. Information (Switzerland), 12(2), 1–21. https://doi.org/10.3390/info12020087

Nowroz, S. T., Saleh, N. M., Shakur, S., Banerjee, S., & Amsaad, F. (2025). A Benchmark Reference for ESP32-CAM Module. http://arxiv.org/abs/2505.24081

Putri, Z., Sani1, A., & Budiana, B. (2025). Kajian Penggunaan ESP32-CAM dengan Platform Edge. 06(03).

Warden, P., & Situnayake, D. (2019). TinyML Machine Learning with TensorFlow Lite on Arduino and Ultra-Low-Power Microcontrollers PREVIEW OF FIRST SIX CHAPTERS Buy the full book at tinymlbook.com.

Downloads

Published

2026-06-08

How to Cite

Shalma Zopi Habibah, & Yulindon Yulindon. (2026). Integrasi ESP32-CAM WROVER dan Radar LD2410C untuk Klasifikasi Manusia dan Hewan Berbasis Edge Impulse. JURNAL ILMIAH PENELITIAN MAHASISWA, 4(3), 719–732. https://doi.org/10.61722/jipm.v4i3.2497

Issue

Section

##section.default.title##

Most read articles by the same author(s)

<< < 1 2