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Target detection algorithm based on deep learning interview essential (rcnn~yolov5)
2022-06-22 04:47:00 【3D vision workshop】
Target detection is a major task in the field of computer vision , It is roughly divided into one-stage target detection and two-stage target detection . One stage target detection model is based on YOLO Series as representative . And RCNN The algorithm is different , Object detection is handled in different ways .
YOLO The biggest advantage of the algorithm is that it is very fast , It can be processed every second 45 frame , Can also understand the general object representation .
From the perspective of personal learning : Excellent computer vision engineer , The learning of target detection cannot avoid , The core of target detection is YOLO.YOLO The series has been developing , It is urgent to study it .
From the perspective of career development :YOLO It has been one of the mainstream algorithms widely used , It's also a monthly salary 30K Above standard engineer skills , It is also a vane of technology and job hunting . therefore , Build a detection model , After deep understanding , You must be able to go further and further on the road of job hunting .
Actually ,YOLO It is not difficult to learn . In order to let everyone learn this key point of computer vision better , I recommend one to you 【 Image target detection training camp 】, from Artificial intelligence experts Dr. Tang Yudi Take you from deep learning to YOLO Series version analysis and application .
The following is an excerpt from this course , Mr. Tang will share from the basic neural network , Step by step YOLO The whole development process of . Master the underlying logic of the algorithm , You can better build the superstructure .
Content Cut only , stay 【 Image target detection training camp 】 in , take Help students to master AI Two core modules in the field : Detection and segmentation , And based on the real data set to carry out the project practice .
From theoretical basis to core principles
Focus on breaking each other !

Famous teachers help High in gold Promote professional Professional ability
Fan discount ! 0.02 element !
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The welfare is bigger , Pre limitation 200 name
01 Course content
Two days , Let you master the depth of learning to YOLO series .
Class time :6 month 22 Japan -23 Japan , Every night 20:00-22:30
Course Services : Record and broadcast + Live lectures + Lecturer answers questions + Class notes + Assignment
Day1: Popular interpretation of the core algorithm necessary for deep learning
Analysis of detailed knowledge points of neural network model .
Interpretation of the overall architecture of neural network model .
Computer vision core model - Convolutional neural networks .
The overall architecture and parameter design of convolutional neural network .
Day2: Image segmentation and target detection algorithm
Classical algorithm for segmenting domain Unet series .
Classical algorithm of object detection YOLO Reading .
YOLO Series upgrade version analysis and application .
Detection model optimization and improvement detail analysis .
notes : This training camp will PPT Courseware 、 Class notes .
PPT Courseware 、 Class notes will be 6 month 23 Japan All assignments are uniformly distributed and 2 The students who come to class every day .
Famous teachers help High in gold Promote professional Professional ability
Fan discount ! 0.02 element !
![]()

The welfare is bigger , Pre limitation 200 name
02 In two days you will reap
Open all code , After class reuse is convenient and efficient
For all the codes involved in the course , We will open it for free !
You can use it After class self-examination 、 Review and consolidate , even to the extent that For future business , Convenient and efficient !
Instructor led practice , Adjoint programming environment
You will get a companion programming environment 、 Instructor led practice 、 Use scientific methods to guide , Help you digest difficult knowledge points
As well as @ Mr. Tang Yudi will share , One Line popular technology and industry experience , Many students personally test the effectiveness A set of technical improvement scheme , Help you get rid of the confusion , Clear growth direction !
Famous teachers help High in gold Promote professional Professional ability
Fan discount ! 0.02 element !
![]()

The welfare is bigger , Pre limitation 200 name


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