Lecture 15: Object Detection

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  • Опубликовано: 6 янв 2025

Комментарии • 44

  • @zhaobryan4441
    @zhaobryan4441 10 месяцев назад +4

    This is the best lecture that I have ever seen since SICP,so beautiful

  • @glowish1993
    @glowish1993 Год назад +1

    thank you for posting such high-quality lectures online for free!! amazing lecturer, slides and content

  • @neilteng1735
    @neilteng1735 3 года назад +18

    Really love this step by step walk through! Hugh improve than the 2017cs231n course!

  • @sachavanweeren9578
    @sachavanweeren9578 2 года назад +4

    Great lecture, very welll explained, step by step. Maybe the best I found so far.

  • @tunaipm
    @tunaipm 3 года назад +6

    Another amazing class! I look forward to watching the updated version describing the use of Transformers in the coming years. Thank you Dr. Justin.

    • @terrelldean9481
      @terrelldean9481 3 года назад

      I know it's quite off topic but does anyone know of a good site to watch new series online?

    • @chiendvhust8122
      @chiendvhust8122 2 года назад

      @@samuelimran3429 Can you send a link? I search google but dont see anything :(

    • @sagniksinha5831
      @sagniksinha5831 4 месяца назад

      @@chiendvhust8122 latest videos are not publicly available

  • @kamranmehdiyev8561
    @kamranmehdiyev8561 Год назад +1

    57:53 should be "from anchor box to proposal box"

  • @DED_Search
    @DED_Search 3 года назад +2

    49:59 how to project RoI onto feature map exactly? 50:10 does snapping projection to feature map grid affect transformation parameters of the bounding box regression?

    • @itchainx4375
      @itchainx4375 Год назад

      No you get wrong understanding. Box was obtained using heuristic methods on the original picture. The convnet can be seen as a transformaion. It converts the cat's picture into feature map. The convert process is the process of projection

  • @TomChenyangJI
    @TomChenyangJI 6 месяцев назад

    I watched a lecture on RNN delivered by him on Stanford channel on YT, that was good

  • @DED_Search
    @DED_Search 3 года назад

    42:12 I am really confused about why all dog detections are considered positive here (precision = 3/5)? Shouldn’t we set a threshold? Thanks.

  • @mailoisback
    @mailoisback 2 года назад +1

    He is a great lecturer!

  • @davidrwasserman
    @davidrwasserman 4 месяца назад

    When we compute the average precision (42:52) is this for one image? a batch? the whole training set?

  • @NielsRogge
    @NielsRogge 4 года назад +4

    Looking at this coming from NLP, NLP seems like so much easier where you just have a Transformer with a sequence classification/token classification head on top.. Here you have a very complex way of computing mAP, region proposals, non-maximum suppression procedure, anchor generation... Luckily, the introduction of DETR by Facebook AI (which replaces a lot of these handcrated features by a Transformer which learns everything end-to-end) seems really refreshing :)

  • @DED_Search
    @DED_Search 3 года назад

    59:00 I don’t quite get the 2k anchor (2 scores) vs 1k (1 score) part. Hmmm

  • @satyamgaba
    @satyamgaba 2 года назад

    31:20 Purple box should be union of both the box. Here is it overflowing

  • @daitran8266
    @daitran8266 3 года назад

    Thank you very much for sharing these useful resources.

  • @yahaisha
    @yahaisha 2 года назад

    best lecture..i like..tq

  • @DED_Search
    @DED_Search 3 года назад

    23:00 and 23:41 how is transformation learnt invariant to RoI warp?1. Warpping changes height and width. 2. Warped RoI are fed into CNN. I’d appreciate if anyone can shed some light here. Thanks.

    • @itchainx4375
      @itchainx4375 Год назад

      Do you know the answer now?I have same question

  • @lifanzhong9782
    @lifanzhong9782 Год назад

    Thank you Justin!!

  • @wireghost897
    @wireghost897 Год назад

    Great lecture. Thanks a lot.

  • @shazzadhasan4067
    @shazzadhasan4067 2 года назад

    thank you for making available, amazing lec

  • @Davide-bx3js
    @Davide-bx3js 2 года назад

    Amazing lecture

  • @neelambujchaturvedi6886
    @neelambujchaturvedi6886 4 года назад

    Why do the authors of the RCNN paper use a log scale transform to get the new scale factors for width ?

  • @zubaidaalsadi4313
    @zubaidaalsadi4313 10 месяцев назад

    I can't download the slides , is there any other way to get it ?

    • @cc98-oe7ol
      @cc98-oe7ol 8 месяцев назад

      The resolution of these slides are quite high, so their size often exceed like 100 MB. Maybe the network is the main issue.

  • @itchainx4375
    @itchainx4375 Год назад

    1:04:13 where is yolo :)

  • @hehehe5198
    @hehehe5198 Год назад

    Does anyone have link to the 2020 version?

    • @davidrwasserman
      @davidrwasserman 4 месяца назад

      drive.google.com/drive/folders/1LXriM9h8WNJGErlYQXIrNNytAzVaHBjF?usp=sharing

  • @krishnatibrewal6640
    @krishnatibrewal6640 2 года назад +2

    Surprisingly there's no mention of YOLO which makes RCNN family obsolete

    • @zainbaloch5541
      @zainbaloch5541 2 года назад

      Yeah!

    • @itchainx4375
      @itchainx4375 Год назад +1

      Seems like teacher don't like Yolo. 2022Winter Lectures not even a word about yolo was mentioned

    • @lifanzhong9782
      @lifanzhong9782 Год назад

      yes I'm curious about it too. Only a flash of yolo paper reference at 1:03:57

  • @QuyetNguyen-sg9dq
    @QuyetNguyen-sg9dq 4 года назад +2

    thanks you very much

  • @elkwang4357
    @elkwang4357 2 года назад

    Is Johnson the guy in the Stanford University?

  • @phangb580
    @phangb580 8 месяцев назад

    37:10

  • @harshdeepsingh3872
    @harshdeepsingh3872 5 месяцев назад +1

  • @lukealexanderhwilson
    @lukealexanderhwilson 3 года назад

    I wonder if mean average precision could be calculated faster while still incorporating the performance of the bounding boxes by simply factoring the detections by their IOU's and using the results instead of rerunning at many different thresholds and averaging.
    For example, perfect Mean Average Precision would impossibly be the first detections all correctly identifying the detectable objects in the image, and the detections all had an IOU of 1.0. Essentially rather than calculating the area under a curve on a 2D plot with precision and recall and replotting many times at various thresholds. We would instead calculate a 3d volume, where a 2d plot of detections matched against a third dimension that represents the IOU (or some factored IOU if it's better).
    It seems to me that that would achieve the same results more quickly and elegantly, if anyone knows more though I would love to hear about it!