Detecting Mice Depth Shapes with Deployable Tiny Neural Networks in Small Cages

被引:0
|
作者
Pau, Danilo Pietro [1 ]
Fiorenza, Gioele [2 ]
Garzola, Marco [3 ]
机构
[1] STMicroelectron, Syst Res & Applicat, Agrate Brianza, Italy
[2] Univ Milano Bicocca, STMicroelectron, Milan, Italy
[3] Tecniplast, Buguggiate, Italy
关键词
Depth map; detection; neural networks; microcontrollers; tiny machine learning; mice; pre-clinical studies;
D O I
10.1109/ZINC61849.2024.10579406
中图分类号
F [经济];
学科分类号
02 ;
摘要
Detecting tiny shapes, per pixel, of mammals can be challenging in small environments, such as the cages used for pre-clinical studies. There are tens of racks containing hundreds of cages in a typical installation. In such a context, this paper examined several neural models, taking into account their computational and memory complexity, to ensure that they can be deployed on tiny off-the-shelf and cheap microcontrollers. The study employed a NUCLEO board with STM32U5 connected to a time of flight sensor named VL53L8CX. This sensor generated sequences of depth frames over time. These data were collected into a hand-crafted dataset, which, following a data augmentation process, achieved a totals of 2498 samples. The models considered were: a U-Net based architecture; a hand-crafted one, called Micronet. The latter, following the post-training quantization procedure to 8 bits integer, achieved a mAP score above 86%, an inference time of 0.27 ms, a FLASH size of 1.3 KiB and a RAM usage of 0.5 KiB. These results enabled the implementation of a high-speed detector on cheap microcontroller chip.
引用
收藏
页码:72 / 77
页数:6
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