
Sign up to save your podcasts
Or


CNNs are characterized by their use of a group of neurons typically referred to as a filter or kernel. In image recognition, this kernel is repeated over the entire image. In this way, CNNs may achieve the property of translational invariance - once trained to recognize certain things, changing the position of that thing in an image should not disrupt the CNN's ability to recognize it. In this episode, we discuss a few high-level details of this important architecture.
By Kyle Polich4.4
475475 ratings
CNNs are characterized by their use of a group of neurons typically referred to as a filter or kernel. In image recognition, this kernel is repeated over the entire image. In this way, CNNs may achieve the property of translational invariance - once trained to recognize certain things, changing the position of that thing in an image should not disrupt the CNN's ability to recognize it. In this episode, we discuss a few high-level details of this important architecture.

32,103 Listeners

30,680 Listeners

288 Listeners

1,094 Listeners

624 Listeners

583 Listeners

299 Listeners

344 Listeners

209 Listeners

201 Listeners

318 Listeners

98 Listeners

576 Listeners

100 Listeners

228 Listeners