@Article{electronics14214266, AUTHOR = {Lech, Piotr and Marciniak, Beata and Okarma, Krzysztof}, TITLE = {A Low-Cost Energy-Efficient IoT Camera Trap Network for Remote Forest Surveillance}, JOURNAL = {Electronics}, VOLUME = {14}, YEAR = {2025}, NUMBER = {21}, ARTICLE-NUMBER = {4266}, URL = {https://www.mdpi.com/2079-9292/14/21/4266}, ISSN = {2079-9292}, ABSTRACT = {The proposed forest monitoring photo trap ecosystem integrates a cost-effective architecture for observation and transmission using Internet of Things (IoT) technologies and long-range digital radio systems such as LoRa (Chirp Spread Spectrum—CSS) and nRF24L01 (Gaussian Frequency Shift Keying—GFSK). To address low-bandwidth links, a novel approach based on the Monte Carlo sampling algorithm enables progressive, bandwidth-aware image transfer and its thumbnail’s reconstruction on edge devices. The system transmits only essential data, supports remote image deletion/retrieval, and minimizes site visits, promoting environmentally friendly practices. A key innovation is the integration of no-reference image quality assessment (NR IQA) to determine when thumbnails are ready for operator review. Due to the computational limitations of the Raspberry Pi 3, the PIQE indicator was adopted as the operational metric in the quality stabilization module, whereas deep learning-based metrics (e.g., HyperIQA, ARNIQA) are retained as offline benchmarks only. Although single-pass inference may meet initial timing thresholds, the cumulative time–energy cost in an online pipeline on Raspberry Pi 3 is too high; hence these metrics remain offline. The system was validated through real-world field tests, confirming its practical applicability and robustness in remote forest environments.}, DOI = {10.3390/electronics14214266} }