說明
Pl@ntNet is a participatory botanical observation platform allowing to identify plants from photos (using deep learning) and to share the observations with the community. The platform has three main front-ends: Pl@ntNet androïd (http://bit.ly/1K4D1eU), Pl@ntNet iOS (http://apple.co/2cMtWgu) and Pl@ntNet web (https://identify.plantnet.org/). Pl@ntNet was founded in 2010 by a consortium of four French research organisms (CIRAD, Inria, INRAE and IRD) and is now open to other members. More information about Pl@ntNet can be found at https://plantnet.org/. The occurrences in this collection are Pl@ntNet observations that have been identified only by the deep learning algorithm but which the algorithm confidence was sufficiently high to consider them as valid.
資料紀錄
此資源出現紀錄的資料已發佈為達爾文核心集檔案(DwC-A),其以一或多組資料表構成分享生物多樣性資料的標準格式。 核心資料表包含 12,142,287 筆紀錄。
此 IPT 存放資料以提供資料儲存庫服務。資料與資源的詮釋資料可由「下載」單元下載。「版本」表格列出此資源的其它公開版本,以便利追蹤其隨時間的變更。
版本
以下的表格只顯示可公開存取資源的已發布版本。
如何引用
研究者應依照以下指示引用此資源。:
AFFOUARD A, JOLY A, LOMBARDO J, CHAMP J, GOEAU H, CHOUET M, GRESSE H, BOTELLA C, BONNET P (2023): Pl@ntNet automatically identified occurrences. v1.8. Pl@ntNet. Dataset/Occurrence. https://ipt.plantnet.org/resource?r=queries&v=1.8
權利
研究者應尊重以下權利聲明。:
此資料的發布者及權利單位為 Pl@ntNet。 This work is licensed under a Creative Commons Attribution (CC-BY) 4.0 License.
GBIF 註冊
此資源已向GBIF註冊,並指定以下之GBIF UUID: 14d5676a-2c54-4f94-9023-1e8dcd822aa0。 Pl@ntNet 發佈此資源,並經由GBIF France同意向GBIF註冊成為資料發佈者。
關鍵字
Occurrence; Observation; Occurrence
聯絡資訊
資源建立者:
-
可回覆此資源相關問題者:
元數據填寫者:
-
與此資源的相關者:
地理涵蓋範圍
Plant observations from Pl@ntNet users come from all around the world.
界定座標範圍 | 緯度南界 經度西界 [-90, -180], 緯度北界 經度東界 [90, 180] |
---|
分類群涵蓋範圍
Pl@ntNet observations focus on plants.
Kingdom | Plantae (Plant) |
---|
計畫資料
PlantNet is a participatory botanical observation platform allowing to identify plants from photos (using deep learning) and share observations with the community. This resource contains occurrences of plants automatically inferred from the plant observations submitted by the users of PlantNet application.
計畫名稱 | Pl@ntNet Queries |
---|---|
辨識碼 | queries |
經費來源 | PlantNet is an open consortium founded by four French research organizations (CIRAD, Inria, INRAE, IRD) and supported by Agropolis Fondation. The two main funding resources are: (i) the annual contribution of the members of the consortium, (ii) donations from the end-users of PlantNet application (>10 million users). |
研究區域描述 | Entire world |
參與計畫的人員:
取樣方法
No sampling protocol, opportunistic observations by Pl@ntNet users.
研究範圍 | Entire world, Plantae. |
---|---|
品質控管 | The validation is based on two main criteria: - the output of the automated identification algorithm is greater than a threshold (more precisely the top-1 probability output by the convolutional neural network is greater than 0.9) - the species name matches the checklist considered as the most trusted one for the country where the observation was done |
方法步驟描述:
- This collection contains occurrences of plants automatically identified from the observations submitted by Pl@ntNet users to identify them (using one of the three applications: androïd, iOS, web, more information here: https://plantnet.org/). The following filters were applied: - is geolocated - is valid (top-1 softmax output > 0.9) - from a user with an enabled account or from an anonymous user - with a known species name (valid or synonym) in PN - species name != Cannabis - date_query > 0 - remove shared queries (already present in observation dataset) - remove duplicate session (keep the most recent query based on the session number) - must be in one of the WGSRPD polygon level 3 and the binomial species name (without author) must match a species of the corresponding Kew checklist
引用文獻
- Joly, A., Goëau, H., Bonnet, P., Bakić, V., Barbe, J., Selmi, S., ... & Yahiaoui I., Carré J., Mouysset E., Molino J.-f., Boujemaa B., Barthélémy D., (2014). Interactive plant identification based on social image data. Ecological Informatics, 23, 22-34. https://doi.org/10.1016/j.ecoinf.2013.07.006
- Joly, A., Bonnet, P., Goëau, H., Barbe, J., Selmi, S., Champ, J., Dufour-Kowalski, S., Affouard, A., Carré, J., Molino, J.-f., Boujemaa, N., & Barthélémy D., (2016). A look inside the Pl@ntNet experience. Multimedia Systems, 22(6), 751-766. https://doi.org/10.1007/s00530-015-0462-9
- Goëau, H., Bonnet, P., Joly, A., 2017. Plant identification based on noisy web data: the amazing performance of deep learning (LifeCLEF 2017). CLEF: Conference and Labs of the Evaluation Forum, Sep 2017, Dublin, Ireland. ⟨hal-01629183⟩ https://hal.archives-ouvertes.fr/hal-01629183
- Affouard, A., Goëau, H., Bonnet, P., Lombardo, J. C., & Joly, A., (2017). Pl@ntNet app in the era of deep learning. ICLR: International Conference on Learning Representations, Apr 2017, Toulon, France. ⟨hal-01629195⟩ https://hal.archives-ouvertes.fr/hal-01629195
額外的詮釋資料
替代的識別碼 | 14d5676a-2c54-4f94-9023-1e8dcd822aa0 |
---|---|
https://ipt.plantnet.org/resource?r=queries |