# Improved Re-Parameterized Convolution for Wildlife Detection in Neighboring Regions of Southwest China

**Authors:** Wenjie Mao, Gang Li, Xiaowei Li

PMC · DOI: 10.3390/ani14081152 · Animals : an Open Access Journal from MDPI · 2024-04-10

## TL;DR

This paper introduces an improved wildlife detection algorithm using re-parameterized convolution to enhance accuracy and speed in monitoring wildlife in Southwest China and neighboring regions.

## Contribution

The novel contribution is a refined wildlife detection algorithm with asymmetric convolutional branches and a tailored optimizer for camera trap images.

## Key findings

- The proposed method achieves 88.3% detection accuracy, outperforming YOLOv6-N by 3.1%.
- The model maintains performance after quantization to INT8 and achieves 6.15 ms inference speed on Jetson Xavier NX.
- The algorithm improves feature characterization and detection performance for low-quality camera trap images.

## Abstract

In response to the quantitative demand for the practical deployment of applications and the need to enhance the detection accuracy of wildlife in complex field environments in southwest China and neighboring regions, we have refined the wildlife detection algorithm based on re-parameterized convolution. This refinement is specifically targeted at addressing the challenges posed by the low quality of wildlife images captured by camera traps and the limitations of traditional object detection algorithms in feature extraction capability. To address these issues, we have introduced a series of improvement schemes. As a result of these enhancements, there has been a noteworthy improvement in both the accuracy of wildlife detection and the speed of model inference. This advancement offers a convenient and efficient method for the preliminary detection in the context of automated wildlife monitoring.

To autonomously detect wildlife images captured by camera traps on a platform with limited resources and address challenges such as filtering out photos without optimal objects, as well as classifying and localizing species in photos with objects, we introduce a specialized wildlife object detector tailored for camera traps. This detector is developed using a dataset acquired by the Saola Working Group (SWG) through camera traps deployed in Vietnam and Laos. Utilizing the YOLOv6-N object detection algorithm as its foundation, the detector is enhanced by a tailored optimizer for improved model performance. We deliberately introduce asymmetric convolutional branches to enhance the feature characterization capability of the Backbone network. Additionally, we streamline the Neck and use CIoU loss to improve detection performance. For quantitative deployment, we refine the RepOptimizer to train a pure VGG-style network. Experimental results demonstrate that our proposed method empowers the model to achieve an 88.3% detection accuracy on the wildlife dataset in this paper. This accuracy is 3.1% higher than YOLOv6-N, and surpasses YOLOv7-T and YOLOv8-N by 5.5% and 2.8%, respectively. The model consistently maintains its detection performance even after quantization to the INT8 precision, achieving an inference speed of only 6.15 ms for a single image on the NVIDIA Jetson Xavier NX device. The improvements we introduce excel in tasks related to wildlife image recognition and object localization captured by camera traps, providing practical solutions to enhance wildlife monitoring and facilitate efficient data acquisition. Our current work represents a significant stride toward a fully automated animal observation system in real-time in-field applications.

## Full-text entities

- **Genes:** UBXN11 (UBX domain protein 11) [NCBI Gene 91544] {aka COA-1, PP2243, SOC, SOCI, UBXD5}
- **Diseases:** Neck (MESH:D006258), injury to people or property (MESH:C000719191), zoonotic diseases (MESH:D015047)
- **Chemicals:** CSLA (-)
- **Species:** Pygathrix nemaeus (dove langur, species) [taxon 54133], Prionodon pardicolor (species) [taxon 205655], M. caeruleus [taxon 357598], Macaca (macaque, genus) [taxon 9539], Viverra zibetha (large Indian civet, species) [taxon 94178], Macaca mulatta (rhesus macaque, species) [taxon 9544], Myophonus caeruleus (species) [taxon 869933], Muntiacus vuquangensis (giant muntjac, species) [taxon 109296], Homo sapiens (human, species) [taxon 9606], Sus scrofa (pig, species) [taxon 9823], Muntiacus muntjak (Indian muntjac, species) [taxon 9888], Tragulus kanchil (species) [taxon 1088131], Pseudoryx nghetinhensis (saola, species) [taxon 97363]
- **Cell lines:** SWG7 — Cricetulus griseus (Chinese hamster), Spontaneously immortalized cell line (CVCL_H340)

## Full text

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## Figures

11 figures with captions in the complete paper: https://tomesphere.com/paper/PMC11047598/full.md

## References

62 references — full list in the complete paper: https://tomesphere.com/paper/PMC11047598/full.md

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Source: https://tomesphere.com/paper/PMC11047598