Unity 机器学习代理工具包 (ML-Agents) 是一个开源项目,它使游戏和模拟能够作为训练智能代理的环境。
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using System.Collections.Generic;
using Unity.MLAgents.Sensors;
using UnityEngine;
namespace Unity.MLAgents.Extensions.Match3
{
/// <summary>
/// Type of observations to generate.
///
/// </summary>
public enum Match3ObservationType
{
/// <summary>
/// Generate a one-hot encoding of the cell type for each cell on the board. If there are special types,
/// these will also be one-hot encoded.
/// </summary>
Vector,
/// <summary>
/// Generate a one-hot encoding of the cell type for each cell on the board, but arranged as
/// a Rows x Columns visual observation. If there are special types, these will also be one-hot encoded.
/// </summary>
UncompressedVisual,
/// <summary>
/// Generate a one-hot encoding of the cell type for each cell on the board, but arranged as
/// a Rows x Columns visual observation. If there are special types, these will also be one-hot encoded.
/// During training, these will be sent as a concatenated series of PNG images, with 3 channels per image.
/// </summary>
CompressedVisual
}
/// <summary>
/// Sensor for Match3 games. Can generate either vector, compressed visual,
/// or uncompressed visual observations. Uses AbstractBoard.GetCellType()
/// and AbstractBoard.GetSpecialType() to determine the observation values.
/// </summary>
public class Match3Sensor : ISparseChannelSensor, IBuiltInSensor
{
private Match3ObservationType m_ObservationType;
private AbstractBoard m_Board;
private ObservationSpec m_ObservationSpec;
private int[] m_SparseChannelMapping;
private string m_Name;
private int m_Rows;
private int m_Columns;
private int m_NumCellTypes;
private int m_NumSpecialTypes;
private ISparseChannelSensor sparseChannelSensorImplementation;
private int SpecialTypeSize
{
get { return m_NumSpecialTypes == 0 ? 0 : m_NumSpecialTypes + 1; }
}
/// <summary>
/// Create a sensor for the board with the specified observation type.
/// </summary>
/// <param name="board"></param>
/// <param name="obsType"></param>
/// <param name="name"></param>
public Match3Sensor(AbstractBoard board, Match3ObservationType obsType, string name)
{
m_Board = board;
m_Name = name;
m_Rows = board.Rows;
m_Columns = board.Columns;
m_NumCellTypes = board.NumCellTypes;
m_NumSpecialTypes = board.NumSpecialTypes;
m_ObservationType = obsType;
m_ObservationSpec = obsType == Match3ObservationType.Vector
? ObservationSpec.Vector(m_Rows * m_Columns * (m_NumCellTypes + SpecialTypeSize))
: ObservationSpec.Visual(m_Rows, m_Columns, m_NumCellTypes + SpecialTypeSize);
// See comment in GetCompressedObservation()
var cellTypePaddedSize = 3 * ((m_NumCellTypes + 2) / 3);
m_SparseChannelMapping = new int[cellTypePaddedSize + SpecialTypeSize];
// If we have 4 cell types and 2 special types (3 special size), we'd have
// [0, 1, 2, 3, -1, -1, 4, 5, 6]
for (var i = 0; i < m_NumCellTypes; i++)
{
m_SparseChannelMapping[i] = i;
}
for (var i = m_NumCellTypes; i < cellTypePaddedSize; i++)
{
m_SparseChannelMapping[i] = -1;
}
for (var i = 0; i < SpecialTypeSize; i++)
{
m_SparseChannelMapping[cellTypePaddedSize + i] = i + m_NumCellTypes;
}
}
/// <inheritdoc/>
public ObservationSpec GetObservationSpec()
{
return m_ObservationSpec;
}
/// <inheritdoc/>
public int Write(ObservationWriter writer)
{
if (m_Board.Rows != m_Rows || m_Board.Columns != m_Columns || m_Board.NumCellTypes != m_NumCellTypes)
{
Debug.LogWarning(
$"Board shape changes since sensor initialization. This may cause unexpected results. " +
$"Old shape: Rows={m_Rows} Columns={m_Columns}, NumCellTypes={m_NumCellTypes} " +
$"Current shape: Rows={m_Board.Rows} Columns={m_Board.Columns}, NumCellTypes={m_Board.NumCellTypes}"
);
}
if (m_ObservationType == Match3ObservationType.Vector)
{
int offset = 0;
for (var r = 0; r < m_Rows; r++)
{
for (var c = 0; c < m_Columns; c++)
{
var val = m_Board.GetCellType(r, c);
for (var i = 0; i < m_NumCellTypes; i++)
{
writer[offset] = (i == val) ? 1.0f : 0.0f;
offset++;
}
if (m_NumSpecialTypes > 0)
{
var special = m_Board.GetSpecialType(r, c);
for (var i = 0; i < SpecialTypeSize; i++)
{
writer[offset] = (i == special) ? 1.0f : 0.0f;
offset++;
}
}
}
}
return offset;
}
else
{
// TODO combine loops? Only difference is inner-most statement.
int offset = 0;
for (var r = 0; r < m_Rows; r++)
{
for (var c = 0; c < m_Columns; c++)
{
var val = m_Board.GetCellType(r, c);
for (var i = 0; i < m_NumCellTypes; i++)
{
writer[r, c, i] = (i == val) ? 1.0f : 0.0f;
offset++;
}
if (m_NumSpecialTypes > 0)
{
var special = m_Board.GetSpecialType(r, c);
for (var i = 0; i < SpecialTypeSize; i++)
{
writer[offset] = (i == special) ? 1.0f : 0.0f;
offset++;
}
}
}
}
return offset;
}
}
/// <inheritdoc/>
public byte[] GetCompressedObservation()
{
var height = m_Rows;
var width = m_Columns;
var tempTexture = new Texture2D(width, height, TextureFormat.RGB24, false);
var converter = new OneHotToTextureUtil(height, width);
var bytesOut = new List<byte>();
// Encode the cell types and special types as separate batches of PNGs
// This is potentially wasteful, e.g. if there are 4 cell types and 1 special type, we could
// fit in in 2 images, but we'll use 3 here (2 PNGs for the 4 cell type channels, and 1 for
// the special types). Note that we have to also implement the sparse channel mapping.
// Optimize this it later.
var numCellImages = (m_NumCellTypes + 2) / 3;
for (var i = 0; i < numCellImages; i++)
{
converter.EncodeToTexture(m_Board.GetCellType, tempTexture, 3 * i);
bytesOut.AddRange(tempTexture.EncodeToPNG());
}
var numSpecialImages = (SpecialTypeSize + 2) / 3;
for (var i = 0; i < numSpecialImages; i++)
{
converter.EncodeToTexture(m_Board.GetSpecialType, tempTexture, 3 * i);
bytesOut.AddRange(tempTexture.EncodeToPNG());
}
DestroyTexture(tempTexture);
return bytesOut.ToArray();
}
/// <inheritdoc/>
public void Update()
{
}
/// <inheritdoc/>
public void Reset()
{
}
/// <inheritdoc/>
public SensorCompressionType GetCompressionType()
{
return m_ObservationType == Match3ObservationType.CompressedVisual ?
SensorCompressionType.PNG :
SensorCompressionType.None;
}
/// <inheritdoc/>
public string GetName()
{
return m_Name;
}
/// <inheritdoc/>
public int[] GetCompressedChannelMapping()
{
return m_SparseChannelMapping;
}
/// <inheritdoc/>
public BuiltInSensorType GetBuiltInSensorType()
{
return BuiltInSensorType.Match3Sensor;
}
static void DestroyTexture(Texture2D texture)
{
if (Application.isEditor)
{
// Edit Mode tests complain if we use Destroy()
Object.DestroyImmediate(texture);
}
else
{
Object.Destroy(texture);
}
}
}
/// <summary>
/// Utility class for converting a 2D array of ints representing a one-hot encoding into
/// a texture, suitable for conversion to PNGs for observations.
/// Works by encoding 3 values at a time as pixels in the texture, thus it should be
/// called (maxValue + 2) / 3 times, increasing the channelOffset by 3 each time.
/// </summary>
internal class OneHotToTextureUtil
{
Color[] m_Colors;
int m_Height;
int m_Width;
private static Color[] s_OneHotColors = { Color.red, Color.green, Color.blue };
public delegate int GridValueProvider(int x, int y);
public OneHotToTextureUtil(int height, int width)
{
m_Colors = new Color[height * width];
m_Height = height;
m_Width = width;
}
public void EncodeToTexture(GridValueProvider gridValueProvider, Texture2D texture, int channelOffset)
{
var i = 0;
// There's an implicit flip converting to PNG from texture, so make sure we
// counteract that when forming the texture by iterating through h in reverse.
for (var h = m_Height - 1; h >= 0; h--)
{
for (var w = 0; w < m_Width; w++)
{
int oneHotValue = gridValueProvider(h, w);
if (oneHotValue < channelOffset || oneHotValue >= channelOffset + 3)
{
m_Colors[i++] = Color.black;
}
else
{
m_Colors[i++] = s_OneHotColors[oneHotValue - channelOffset];
}
}
}
texture.SetPixels(m_Colors);
}
}
}