Jetson Nano Vs. Intel Neural Compute Stick 2

https://devblogs.nvidia.com/jetson-nano-ai-computing/

Table 2 provides full results, including the performance of other platforms like the Raspberry Pi 3, Intel Neural Compute Stick 2, and Google Edge TPU Coral Dev Board:

Table 2. Inference performance results from Jetson Nano, Raspberry Pi 3, Intel Neural Compute Stick 2, and Google Edge TPU Coral Dev Board

Model

Application

Framework

NVIDIA Jetson Nano

Raspberry Pi 3

Raspberry Pi 3 + Intel Neural Compute Stick 2

Google Edge TPU Dev Board

ResNet-50
(224×224)

Classification

TensorFlow

36 FPS

1.4 FPS

16 FPS

DNR

MobileNet-v2
(300×300)

Classification

TensorFlow

64 FPS

2.5 FPS

30 FPS

130 FPS

SSD ResNet-18 (960×544)

Object Detection

TensorFlow

5 FPS

DNR

DNR

DNR

SSD ResNet-18 (480×272)

Object Detection

TensorFlow

16 FPS

DNR

DNR

DNR

SSD ResNet-18 (300×300)

Object Detection

TensorFlow

18 FPS

DNR

DNR

DNR

SSD Mobilenet-V2 (960×544)

Object
Detection

TensorFlow

8 FPS

DNR

1.8 FPS

DNR

SSD Mobilenet-V2 (480×272)

Object Detection

TensorFlow

27 FPS

DNR

7 FPS

DNR

SSD Mobilenet-V2

(300×300)

Object Detection

TensorFlow

39 FPS

1 FPS

11 FPS

48 FPS

Inception V4

(299×299)

Classification

PyTorch

11 FPS

DNR

DNR

9 FPS

Tiny YOLO V3

(416×416)

Object Detection

Darknet

25 FPS

0.5 FPS

DNR

DNR

OpenPose

(256×256)

Pose Estimation

Caffe

14 FPS

DNR

5 FPS

DNR

VGG-19 (224×224)

Classification

MXNet

10 FPS

0.5 FPS

5 FPS

DNR

Super Resolution (481×321)

Image Processing

PyTorch

15 FPS

DNR

0.6 FPS

DNR

Unet

(1x512x512)

Segmentation

Caffe

18 FPS

DNR

5 FPS

DNR

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转载自www.cnblogs.com/cloudrivers/p/11912121.html