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【DL輪読会】Diagnosing Vision-and-Language Navigation: What Really Matters
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2021/04/23 Deep Learning JP: http://deeplearning.jp/seminar-2/
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【DL輪読会】Diagnosing Vision-and-Language Navigation: What Really Matters
1.
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22.
࣮ݧ w ํ๏ɿը૾͔ΒʮΦϒδΣΫτʯΛ#PVOEJOH#PYͰݕ͠ɼͦͰࣔࢦޠݴͷΦϒδΣΫτ͕͞ٴݴΕ͍ͯΔ߹ͷΈNBTL Λ͔͚Δ w JF λεΫʹͱͬͯඞཁͳΦϒδΣΫτʹϚεΫΛ͔͚Δ w
݁ՌɿϥϯμϜʹϚεΫΛ͔͚ͨ߹ͱɼ͋·Γੑೳ͕มΘΒͳ͍ w ߟɿ࣮ݧΑΓɼޠݴͷհೖੑೳʹେ͖ͳӨڹɽ࣮ݧΑΓɼը૾ͷհೖੑೳʹখ͞ͳӨڹ w ը૾ͱޠݴͷΦϒδΣΫτΛରͰରԠ͍ͤͯ͞ΔΘ͚Ͱͳ͘ɼը૾ͷ(MPCBMͳಛΛͱޠݴରԠ͚͍ͮͯΔͷͰʁ
23.
࣮݁ݧ w తɿΤʔδΣϯτ͕ɼࣔࢦޠݴͷʮΦϒδΣΫτͱը૾ͷʮΦϒδΣ ΫτʯΛ݁ͼ͚ͭΔ͜ͱ͕Ͱ͖͍ͯΔ͔֬ೝ w ݁ɿ w
5SBOTGPSNFSܥͷख๏ɼΦϒδΣΫτʹؔ͢Δޠݴɾࢹ֮ใΛ݁ͼ ͚ͭΔ͜ͱ͕Մೳ w ͨͩ͠ɼࢹ֮ใͷதͷΦϒδΣΫτͷ#PVOEJOH#PYͱޠݴΛਖ਼֬ʹ݁ ͼ͚͍ͭͯΔͷͰͳ͘ɼγʔϯશମͱޠݴΛ݁ͼ͚ͭͯཧղ͍ͯ͠ΔՄ ೳੑ͕͋Δ
24.
3FTFBSDI2VFTUJPOTͱ,FZpOEJOHT·ͱΊ w ࣔࢦޠݴͷʮΦϒδΣΫτʯʮํʯʹؔ͢ΔτʔΫϯΛར༻Ͱ͖͍ͯΔ͔ w 5PVDIEPXOͰڥɼΤʔδΣϯτ͕ΦϒδΣΫτʹؔ͢ΔใΛ͋·Γར༻Ͱ͖͍ͯͳ ͍ɽΑΓ*ͳྗڧNBHF'FBUVSFYUSBDUPS 0CKFDU%FUFDUPST͕ඞཁʁ w
ΤʔδΣϯτը૾ೖྗΛͲ͏͍֮ͯ͠Δ͔ w ڑతʹ͍ۙԕ͍ΦϒδΣΫτʹҙΛ͚Δ͔ 5SBOTGPSNFSCBTFEͩͱ ؔͳͦ͞͏ w ݸʑͷମγʔϯશମʹҙΛ͚Δ͔γʔϯશମར༻͍ͯ͠Δ w ΤʔδΣϯτςΩετͱը૾ͷFOUJUZΛ݁ͼ͚ͭΔ͜ͱͰ͖Δ͔ w ඞͣ݁͠ͼ͍͍ͭͯͳ͍ɽ͋ΔΦϒδΣΫτʹؔ͢Δ୯ͱޠɼͦΕʹରԠ͢ΔγʔϯશମΛ ݁ͼ͚͍ͭͯΔՄೳੑ͕͋Δ
25.
·ͱΊ w φϏήʔγϣϯΤʔδΣϯτ͕ͱޠݴը૾ͷϚϧνϞʔμϧσʔλΛͲͷ Α͏ʹղऍ͍ͯ͠Δ͔ௐࠪΛߦͬͨ w ͜ͷจͷݟΛλεΫͷઃఆφϏήʔγϣϯΤʔδΣϯτͷઃʹܭ ཱͯͯཉ͍͠ w
5PVDIEPXOͰڥɼΑΓ*ͳྗڧNBHF'FBUVSFYUSBDUPS 0CKFDU%FUFDUPST͕ඞཁ w (MPCBMͳը૾ಛʢγʔϯશମʣͷׂʹ͍ͭͯ͞ΒͳΔ͕ڀݚඞཁ
26.
ൃදऀͷײ w ΤʔδΣϯτͷڍಈͷௐࠪΛߦ͏ํ๏ͱͯ͠ࢀߟʹͳΓ·ͨ͠ɽ w ࣮ݧͷɼޠݴͷΦϒδΣΫττʔΫϯʹհೖ͢Δ߹ͱɼը૾ͷΦ ϒδΣΫτ#PVOEJOH#PYʹհೖ͢Δ߹Ͱɼੑೳ͕ҟͳΔͱ͍͏ͷ໘ ന͍Ͱ͢ɽ w
'JHVSFͷɼʮਓؒͷੑೳʹٴͳ͍ʯͱ͍͏ٞʹ͍ͭͯɼαϯϓ ϧαΠζΛແ૿ʹݶ͢͜ͱ͕Ͱ͖ͳ͍ͷͰɼσʔλͷݶք͔ΞϧΰϦζ Ϝͷݶք͔ۃݟΊΔ͜ͱ͕Ͱ͖ͳ͍ͷ͕ͩͱࢥ͍·ͨ͠ɽ7-/ʹ͓͍ ͯαϯϓϧαΠζΛແ૿ʹݶͤΔγϛϡϨʔλ͕ཉ͍͠Ͱ͢ɽ
27.
ࢀߟจݙ w OEFSTPOFUBM$713 7JTJPOBOE-BOHVBHF/BWJHBUJPO*OUFSQSFUJOHWJTVBMMZ HSPVOEFEOBWJHBUJPOJOTUSVDUJPOTJOSFBMFOWJSPONFOUT w $IFOFUBM$713 5PVDIEPXO/BUVSBM-BOHVBHF/BWJHBUJPOBOE4QBUJBM3FBTPOJOH JO7JTVBM4USFFUOWJSPONFOUT w
5BOFUBM-FBSOJOHUPOBWJHBUFVOTFFOFOWJSPONFOUT#BDLUSBOTMBUJPOXJUIFOWJSPO NFOUBMESPQPVU w )POHFUBMSFDVSSFOUWJTJPOBOEMBOHVBHF#35GPSOBWJHBUJPO w )BPFUBM$713 5PXBSETMFBSOJOHBHFOFSJDBHFOUGPSWJTJPOBOEMBOHVBHF OBWJHBUJPOWJBQSFUSBJOJOH w 9JBOHFUBM./-1 -FBSOJOHUPTUPQTJNQMFZFUF⒎FDUJWFBQQSPBDIUPVSCBO WJTJPOMBOHVBHFOBWJHBUJPO w ;IVFUBM.VMUJNPEBMUFYUTUZMFUSBOTGFSGPSPVUEPPSWJTJPOBOEMBOHVBHFOBWJHBUJPO
28.
QQFOEJY
29.
137-/5 w JNBHFUFYUBDUJPOͷUSJQMFUΛ༻͍ͨࣄલֶशʢ࠶ߏؼೖΕͳ͍ʣ w 7-/ʹ͏߹ɼԼهͷUSBOTGPSNFS͔Βൈ͖ग़ͨ͠XPSEFNCFEEJOHΛɼैདྷͷ -45.ϕʔεTFRTFRϞσϧͷೖྗͱͯ͠͏
30.
7-/ˠ#35 w Λ࠶ؼతʹѻ ͏͜ͱͰɼ෦ ؍ଌʹରԠ ͤ͞Δ st
31.
7-/5SBOTGPSNFS w $SPTT.PEBM ODPEFSʹ 5SBOTGPSNFSΛ ࠾༻ w *OTUSVDUJPO ODPEFSͰɼ #35ʹΑΔ୯ޠ ຒΊࠐΈͷฏۉΛ औΔ͜ͱͰจষຒ ΊࠐΈΛ࡞Δ
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